功能新增: - 新增 POST /api/ai/analyze-mask 后端接口,基于 mask polygon、bbox、points 和 score 返回置信度来源、面积、拓扑锚点和后端分析提示。 - 前端新增 analyzeMask API 封装,并在本体检查面板读取选中 mask 的后端几何属性和重新提取拓扑锚点结果。 - 右侧语义分类树点击分类时,会给当前选中 mask 换标签、更新 class 元数据,并将选中 mask 移到前端渲染最上层,方便继续编辑。 - 分割工作区画布新增上下文操作提示,覆盖多边形 Enter 完成、Esc 取消、首节点闭合、拖拽图形、点区域、SAM 点/框提示、区域合并/去除选择顺序和多边形编辑。 - AI 智能分割画布新增正向点、反向点、边界框选和视口控制的上下文提示。 - 自动传播交互收敛为参考帧加起止帧范围加单个“自动传播”按钮,默认使用当前参考帧全部 mask 作为 seed。 - 时间轴改为用浅蓝色进度条区段标记自动传播生成的帧,而不是已编辑帧竖线提示。 Bugfix: - AI 分割页无当前帧时移除外部演示背景图,改为明确空状态提示,避免误以为外部图片可参与真实推理。 - 工具栏魔法棒文案改为“打开 AI 智能分割”,避免误导为直接触发 SAM 推理。 - Canvas 底部当前图层信息改为显示真实选中 mask 标签和 annotation id,不再使用固定占位文本。 - 已保存标注回显时保留 mask metadata 中的传播来源、score 等字段,供时间轴和属性面板识别。 - 清理 server.ts 中遗留的 /api/login、/api/projects、/api/templates 内存 mock API,避免和 FastAPI 真实后端混淆。 测试: - 补充 analyze-mask 后端测试,覆盖后端几何属性和锚点返回。 - 补充 api.analyzeMask 前端契约测试,覆盖 normalized polygon、bbox、points 和 extract_skeleton payload。 - 补充本体面板测试,覆盖后端属性读取、自定义分类写回后端模板、选中 mask 换标签和置顶显示。 - 补充 Canvas 测试,覆盖上下文提示、多边形完成提示、布尔选择顺序提示、当前图层真实显示和编辑优先级。 - 补充 AI 分割测试,覆盖无帧空状态和提示工具上下文提示。 - 更新 Konva 测试 mock,支持拖动过程、stroke/dash/fillRule 等渲染断言。 文档: - 更新 README 和 AGENTS,说明 server.ts 不再保留业务 mock API。 - 更新 doc/02、doc/03、doc/04、doc/05、doc/07、doc/08、doc/09,记录后端属性分析、分类置顶显示、上下文提示、自动传播按钮、传播帧标记、测试覆盖和当前剩余限制。
473 lines
16 KiB
Python
473 lines
16 KiB
Python
import numpy as np
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import cv2
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def _create_project_and_frame(client):
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project = client.post("/api/projects", json={"name": "AI Project"}).json()
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frame = client.post(f"/api/projects/{project['id']}/frames", json={
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"project_id": project["id"],
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"frame_index": 0,
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"image_url": "frames/0.jpg",
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"width": 640,
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"height": 360,
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}).json()
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template = client.post("/api/templates", json={
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"name": "Template",
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"color": "#06b6d4",
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"z_index": 0,
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"classes": [],
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"rules": [],
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}).json()
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return project, frame, template
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def test_predict_accepts_point_object_with_labels(client, monkeypatch):
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_, frame, _ = _create_project_and_frame(client)
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calls = {}
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monkeypatch.setattr("routers.ai._load_frame_image", lambda frame: np.zeros((10, 10, 3), dtype=np.uint8))
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def fake_predict_points(image, points, labels):
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calls["args"] = (points, labels)
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return (
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[[[0.1, 0.1], [0.9, 0.1], [0.9, 0.9]]],
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[0.95],
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)
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monkeypatch.setattr("routers.ai.sam_registry.predict_points", lambda model, image, points, labels: fake_predict_points(image, points, labels))
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response = client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "point",
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"prompt_data": {"points": [[0.5, 0.5], [0.1, 0.1]], "labels": [1, 0]},
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})
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assert response.status_code == 200
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assert response.json()["scores"] == [0.95]
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assert calls["args"] == ([[0.5, 0.5], [0.1, 0.1]], [1, 0])
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def test_predict_applies_crop_and_background_filter_options(client, monkeypatch):
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_, frame, _ = _create_project_and_frame(client)
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calls = {}
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monkeypatch.setattr("routers.ai._load_frame_image", lambda frame: np.zeros((100, 200, 3), dtype=np.uint8))
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def fake_predict_points(model, image, points, labels):
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calls["shape"] = image.shape
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calls["points"] = points
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calls["labels"] = labels
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return (
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[
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[[0.0, 0.0], [0.2, 0.0], [0.2, 0.2]],
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[[0.45, 0.45], [0.55, 0.45], [0.55, 0.55]],
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],
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[0.9, 0.01],
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)
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monkeypatch.setattr("routers.ai.sam_registry.predict_points", fake_predict_points)
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response = client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "point",
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"prompt_data": {"points": [[0.5, 0.5], [0.52, 0.52]], "labels": [1, 0]},
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"options": {
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"crop_to_prompt": True,
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"crop_margin": 0.1,
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"auto_filter_background": True,
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"min_score": 0.05,
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},
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})
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assert response.status_code == 200
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assert calls["shape"][0] < 100
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assert calls["shape"][1] < 200
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assert calls["labels"] == [1, 0]
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assert response.json()["scores"] == [0.9]
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polygon = response.json()["polygons"][0]
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assert all(0.0 <= coord <= 1.0 for point in polygon for coord in point)
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def test_predict_box_and_rejects_semantic_prompt(client, monkeypatch):
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_, frame, _ = _create_project_and_frame(client)
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monkeypatch.setattr("routers.ai._load_frame_image", lambda frame: np.zeros((10, 10, 3), dtype=np.uint8))
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monkeypatch.setattr("routers.ai.sam_registry.predict_box", lambda model, image, box: (
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[[[0.2, 0.2], [0.8, 0.2], [0.8, 0.8]]],
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[0.8],
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))
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box_response = client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "box",
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"prompt_data": [0.2, 0.2, 0.8, 0.8],
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})
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semantic_response = client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "semantic",
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"prompt_data": "胆囊",
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"model": "sam3",
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"options": {"min_score": 0.05},
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})
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assert box_response.status_code == 200
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assert box_response.json()["scores"] == [0.8]
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assert semantic_response.status_code == 400
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assert "Unsupported model: sam3" in semantic_response.json()["detail"]
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def test_predict_interactive_combines_box_and_points(client, monkeypatch):
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_, frame, _ = _create_project_and_frame(client)
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calls = {}
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monkeypatch.setattr("routers.ai._load_frame_image", lambda frame: np.zeros((10, 10, 3), dtype=np.uint8))
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def fake_predict_interactive(model, image, box, points, labels):
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calls["model"] = model
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calls["box"] = box
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calls["points"] = points
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calls["labels"] = labels
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return (
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[[[0.2, 0.2], [0.8, 0.2], [0.8, 0.8]]],
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[0.88],
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)
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monkeypatch.setattr("routers.ai.sam_registry.predict_interactive", fake_predict_interactive)
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response = client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "interactive",
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"prompt_data": {
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"box": [0.1, 0.1, 0.9, 0.9],
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"points": [[0.5, 0.5], [0.2, 0.2]],
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"labels": [1, 0],
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},
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"model": "sam2.1_hiera_small",
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})
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assert response.status_code == 200
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assert response.json()["scores"] == [0.88]
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assert calls == {
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"model": "sam2.1_hiera_small",
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"box": [0.1, 0.1, 0.9, 0.9],
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"points": [[0.5, 0.5], [0.2, 0.2]],
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"labels": [1, 0],
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}
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def test_model_status_reports_runtime(client, monkeypatch):
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monkeypatch.setattr("routers.ai.sam_registry.runtime_status", lambda selected_model=None: {
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"selected_model": "sam2.1_hiera_tiny",
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"gpu": {
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"available": False,
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"device": "cpu",
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"name": None,
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"torch_available": True,
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"torch_version": "2.x",
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"cuda_version": None,
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},
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"models": [
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{
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"id": "sam2.1_hiera_tiny",
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"label": "SAM 2.1 Tiny",
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"available": True,
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"loaded": False,
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"device": "cpu",
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"supports": ["point", "box", "auto"],
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"message": "ready",
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"package_available": True,
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"checkpoint_exists": True,
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"checkpoint_path": "model.pt",
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"python_ok": True,
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"torch_ok": True,
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"cuda_required": False,
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},
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],
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})
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response = client.get("/api/ai/models/status")
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assert response.status_code == 200
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body = response.json()
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assert body["selected_model"] == "sam2.1_hiera_tiny"
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assert len(body["models"]) == 1
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assert body["models"][0]["id"] == "sam2.1_hiera_tiny"
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def test_model_status_rejects_disabled_sam3(client):
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response = client.get("/api/ai/models/status?selected_model=sam3")
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assert response.status_code == 400
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assert "Unsupported model" in response.json()["detail"]
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def test_analyze_mask_returns_backend_geometry_properties(client):
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_, frame, _ = _create_project_and_frame(client)
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response = client.post("/api/ai/analyze-mask", json={
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"frame_id": frame["id"],
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"mask_data": {
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"polygons": [[[0.1, 0.1], [0.3, 0.1], [0.3, 0.3], [0.1, 0.3]]],
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"source": "sam2.1_hiera_tiny",
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"score": 0.87,
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},
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"extract_skeleton": True,
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})
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assert response.status_code == 200
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body = response.json()
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assert body["confidence"] == 0.87
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assert body["confidence_source"] == "model_score"
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assert body["topology_anchor_count"] == 4
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assert body["area"] > 0
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assert body["message"] == "已从后端重新提取几何拓扑锚点"
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def test_propagate_saves_tracked_annotations(client, monkeypatch):
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project = client.post("/api/projects", json={"name": "Video Project"}).json()
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frames = [
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client.post(f"/api/projects/{project['id']}/frames", json={
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"project_id": project["id"],
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"frame_index": idx,
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"image_url": f"frames/{idx}.jpg",
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"width": 640,
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"height": 360,
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}).json()
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for idx in range(3)
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]
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calls = {}
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monkeypatch.setattr("routers.ai.download_file", lambda object_name: b"jpeg")
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def fake_propagate_video(model, frame_paths, source_frame_index, seed, direction, max_frames):
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calls["model"] = model
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calls["source_frame_index"] = source_frame_index
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calls["seed"] = seed
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calls["direction"] = direction
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calls["max_frames"] = max_frames
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calls["frame_count"] = len(frame_paths)
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return [
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{
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"frame_index": 0,
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"polygons": [[[0.1, 0.1], [0.2, 0.1], [0.2, 0.2]]],
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"scores": [0.9],
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"object_ids": [1],
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},
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{
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"frame_index": 1,
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"polygons": [[[0.15, 0.15], [0.25, 0.15], [0.25, 0.25]]],
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"scores": [0.8],
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"object_ids": [1],
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},
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]
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monkeypatch.setattr("routers.ai.sam_registry.propagate_video", fake_propagate_video)
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response = client.post("/api/ai/propagate", json={
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"project_id": project["id"],
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"frame_id": frames[0]["id"],
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"model": "sam2.1_hiera_tiny",
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"direction": "forward",
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"max_frames": 2,
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"include_source": False,
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"seed": {
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"polygons": [[[0.1, 0.1], [0.2, 0.1], [0.2, 0.2]]],
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"bbox": [0.1, 0.1, 0.1, 0.1],
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"label": "胆囊",
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"color": "#ff0000",
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"class_metadata": {"id": "c1", "name": "胆囊", "color": "#ff0000", "zIndex": 20},
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"template_id": None,
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},
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})
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assert response.status_code == 200
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body = response.json()
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assert body["created_annotation_count"] == 1
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assert body["processed_frame_count"] == 2
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assert calls["model"] == "sam2.1_hiera_tiny"
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assert calls["source_frame_index"] == 0
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assert calls["direction"] == "forward"
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assert calls["frame_count"] == 2
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saved = body["annotations"][0]
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assert saved["frame_id"] == frames[1]["id"]
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assert saved["mask_data"]["source"] == "sam2.1_hiera_tiny_propagation"
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assert saved["mask_data"]["class"]["name"] == "胆囊"
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assert saved["mask_data"]["score"] == 0.8
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listing = client.get(f"/api/ai/annotations?project_id={project['id']}")
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assert len(listing.json()) == 1
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def test_predict_validation_errors(client, monkeypatch):
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project, _, _ = _create_project_and_frame(client)
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assert client.post("/api/ai/predict", json={
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"image_id": 999,
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"prompt_type": "point",
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"prompt_data": [[0.5, 0.5]],
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}).status_code == 404
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frame = client.post(f"/api/projects/{project['id']}/frames", json={
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"project_id": project["id"],
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"frame_index": 1,
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"image_url": "frames/1.jpg",
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}).json()
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monkeypatch.setattr("routers.ai._load_frame_image", lambda frame: np.zeros((10, 10, 3), dtype=np.uint8))
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assert client.post("/api/ai/predict", json={
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"image_id": frame["id"],
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"prompt_type": "box",
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"prompt_data": [0.1, 0.2],
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}).status_code == 400
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def test_save_annotation_validates_project_and_frame(client):
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project, frame, template = _create_project_and_frame(client)
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saved = client.post("/api/ai/annotate", json={
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"project_id": project["id"],
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"frame_id": frame["id"],
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"template_id": template["id"],
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"mask_data": {"polygons": [[[0.1, 0.1], [0.9, 0.1], [0.9, 0.9]]]},
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"points": [[0.5, 0.5]],
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"bbox": [0.1, 0.1, 0.8, 0.8],
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})
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assert saved.status_code == 201
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assert saved.json()["project_id"] == project["id"]
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listing = client.get(f"/api/ai/annotations?project_id={project['id']}")
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assert listing.status_code == 200
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assert listing.json()[0]["id"] == saved.json()["id"]
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frame_listing = client.get(f"/api/ai/annotations?project_id={project['id']}&frame_id={frame['id']}")
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assert frame_listing.status_code == 200
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assert len(frame_listing.json()) == 1
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missing_project = client.post("/api/ai/annotate", json={"project_id": 999})
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assert missing_project.status_code == 404
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missing_frame = client.post("/api/ai/annotate", json={
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"project_id": project["id"],
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"frame_id": 999,
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})
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assert missing_frame.status_code == 404
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missing_project_list = client.get("/api/ai/annotations?project_id=999")
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assert missing_project_list.status_code == 404
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def test_update_and_delete_annotation(client):
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project, frame, template = _create_project_and_frame(client)
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saved = client.post("/api/ai/annotate", json={
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"project_id": project["id"],
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"frame_id": frame["id"],
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"template_id": template["id"],
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"mask_data": {
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"polygons": [[[0.1, 0.1], [0.9, 0.1], [0.9, 0.9]]],
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"label": "AI Mask",
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"color": "#06b6d4",
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},
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"points": [[0.5, 0.5]],
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"bbox": [0.1, 0.1, 0.8, 0.8],
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}).json()
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updated = client.patch(f"/api/ai/annotations/{saved['id']}", json={
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"template_id": template["id"],
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"mask_data": {
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"polygons": [[[0.2, 0.2], [0.8, 0.2], [0.8, 0.8]]],
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"label": "胆囊",
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"color": "#ff0000",
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"class": {"id": "c1", "name": "胆囊", "color": "#ff0000", "zIndex": 20},
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},
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"points": [[0.4, 0.4]],
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"bbox": [0.2, 0.2, 0.6, 0.6],
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})
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assert updated.status_code == 200
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body = updated.json()
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assert body["mask_data"]["label"] == "胆囊"
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assert body["mask_data"]["class"]["id"] == "c1"
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assert body["points"] == [[0.4, 0.4]]
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assert body["bbox"] == [0.2, 0.2, 0.6, 0.6]
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listing = client.get(f"/api/ai/annotations?project_id={project['id']}")
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assert listing.status_code == 200
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assert listing.json()[0]["mask_data"]["class"]["name"] == "胆囊"
|
|
|
|
deleted = client.delete(f"/api/ai/annotations/{saved['id']}")
|
|
assert deleted.status_code == 204
|
|
|
|
empty_listing = client.get(f"/api/ai/annotations?project_id={project['id']}")
|
|
assert empty_listing.status_code == 200
|
|
assert empty_listing.json() == []
|
|
|
|
|
|
def test_update_and_delete_annotation_validation(client):
|
|
project, frame, template = _create_project_and_frame(client)
|
|
saved = client.post("/api/ai/annotate", json={
|
|
"project_id": project["id"],
|
|
"frame_id": frame["id"],
|
|
"template_id": template["id"],
|
|
}).json()
|
|
|
|
assert client.patch("/api/ai/annotations/999", json={"bbox": [0, 0, 1, 1]}).status_code == 404
|
|
assert client.delete("/api/ai/annotations/999").status_code == 404
|
|
assert client.patch(
|
|
f"/api/ai/annotations/{saved['id']}",
|
|
json={"template_id": 999},
|
|
).status_code == 404
|
|
|
|
|
|
def test_import_gt_mask_creates_annotations_with_seed_points(client):
|
|
project, frame, template = _create_project_and_frame(client)
|
|
mask = np.zeros((360, 640), dtype=np.uint8)
|
|
cv2.rectangle(mask, (100, 80), (260, 220), 255, thickness=-1)
|
|
ok, encoded = cv2.imencode(".png", mask)
|
|
assert ok
|
|
|
|
response = client.post(
|
|
"/api/ai/import-gt-mask",
|
|
data={
|
|
"project_id": str(project["id"]),
|
|
"frame_id": str(frame["id"]),
|
|
"template_id": str(template["id"]),
|
|
"label": "Imported GT",
|
|
"color": "#22c55e",
|
|
},
|
|
files={"file": ("mask.png", encoded.tobytes(), "image/png")},
|
|
)
|
|
|
|
assert response.status_code == 201
|
|
body = response.json()
|
|
assert len(body) == 1
|
|
assert body[0]["project_id"] == project["id"]
|
|
assert body[0]["frame_id"] == frame["id"]
|
|
assert body[0]["template_id"] == template["id"]
|
|
assert body[0]["mask_data"]["label"] == "Imported GT"
|
|
assert body[0]["mask_data"]["source"] == "gt_mask"
|
|
assert body[0]["mask_data"]["gt_label_value"] == 255
|
|
assert len(body[0]["mask_data"]["polygons"][0]) >= 3
|
|
assert len(body[0]["points"]) == 1
|
|
assert 0.0 <= body[0]["points"][0][0] <= 1.0
|
|
assert 0.0 <= body[0]["points"][0][1] <= 1.0
|
|
|
|
|
|
def test_import_gt_mask_splits_label_values(client):
|
|
project, frame, _ = _create_project_and_frame(client)
|
|
mask = np.zeros((360, 640), dtype=np.uint8)
|
|
cv2.rectangle(mask, (20, 20), (120, 120), 1, thickness=-1)
|
|
cv2.rectangle(mask, (220, 80), (320, 180), 2, thickness=-1)
|
|
ok, encoded = cv2.imencode(".png", mask)
|
|
assert ok
|
|
|
|
response = client.post(
|
|
"/api/ai/import-gt-mask",
|
|
data={
|
|
"project_id": str(project["id"]),
|
|
"frame_id": str(frame["id"]),
|
|
"label": "GT Class",
|
|
},
|
|
files={"file": ("labels.png", encoded.tobytes(), "image/png")},
|
|
)
|
|
|
|
assert response.status_code == 201
|
|
body = sorted(response.json(), key=lambda item: item["mask_data"]["gt_label_value"])
|
|
assert [item["mask_data"]["gt_label_value"] for item in body] == [1, 2]
|
|
assert [item["mask_data"]["label"] for item in body] == ["GT Class 1", "GT Class 2"]
|
|
assert all(len(item["points"]) == 1 for item in body)
|