zamba.models.densepose.densepose_manager¶
Attributes¶
DENSEPOSE_AVAILABLE = True
module-attribute
¶
MODELS = dict(animals=dict(config=str(Path(__file__).parent / 'assets' / 'densepose_rcnn_R_50_FPN_soft_animals_I0_finetune_16k.yaml'), densepose_weights_url='https://dl.fbaipublicfiles.com/densepose/cse/densepose_rcnn_R_50_FPN_soft_animals_I0_finetune_16k/270727112/model_final_421d28.pkl', weights='zamba_densepose_model_final_421d28.pkl', viz_class=DensePoseOutputsVertexVisualizer, viz_class_kwargs=dict()), chimps=dict(config=str(Path(__file__).parent / 'assets' / 'densepose_rcnn_R_50_FPN_soft_chimps_finetune_4k.yaml'), densepose_weights_url='https://dl.fbaipublicfiles.com/densepose/cse/densepose_rcnn_R_50_FPN_soft_chimps_finetune_4k/253146869/model_final_52f649.pkl', weights='zamba_densepose_model_final_52f649.pkl', viz_class=DensePoseOutputsTextureVisualizer, viz_class_kwargs=dict(texture_atlases_dict={'chimp_5029': get_texture_atlas(str(Path(__file__).parent / 'assets' / 'chimp_texture_colors_flipped.tif'))}), anatomy_color_mapping=str(Path(__file__).parent / 'assets' / 'chimp_5029_parts.csv')))
module-attribute
¶
Classes¶
DensePoseManager
¶
Source code in zamba/models/densepose/densepose_manager.py
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Attributes¶
anatomy_color_mapping = pd.read_csv(model['anatomy_color_mapping'], index_col=0)
instance-attribute
¶
cfg = get_cfg()
instance-attribute
¶
predictor = DefaultPredictor(self.cfg)
instance-attribute
¶
vis_class_to_mesh_name = get_class_to_mesh_name_mapping(self.cfg)
instance-attribute
¶
vis_embedder = build_densepose_embedder(self.cfg)
instance-attribute
¶
vis_extractor = create_extractor(self.visualizer)
instance-attribute
¶
vis_mesh_vertex_embeddings = {mesh_name: self.vis_embedder(mesh_name).to(self.cfg.MODEL.DEVICE) for mesh_name in self.vis_class_to_mesh_name.values() if self.vis_embedder.has_embeddings(mesh_name)}
instance-attribute
¶
visualizer = model['viz_class'](self.cfg, device=self.cfg.MODEL.DEVICE, None=model.get('viz_class_kwargs', {}))
instance-attribute
¶
Functions¶
__init__(model = MODELS['chimps'], model_cache_dir: Path = Path('.zamba_cache'), download_region = RegionEnum('us'))
¶
Create a DensePoseManager object.
Parameters¶
dict, optional (default MODELS['chimps'])
A dictionary with the densepose model defintion like those defined in MODELS.
Source code in zamba/models/densepose/densepose_manager.py
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anatomize_image(visualized_img_arr, outputs, output_path = None)
¶
Convert the pose information into the percent of pixels in the detection bounding box that correspond to each part of the anatomy in an image.
Parameters¶
numpy array (unit8) BGR
The numpy array the image after the texture has been visualized (by calling DensePoseManager.visualize_image).
outputs
The outputs from running DensePoseManager.predict*
Returns¶
pandas.DataFrame DataFrame with percent of pixels of the bounding box that correspond to each anatomical part
Source code in zamba/models/densepose/densepose_manager.py
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anatomize_video(visualized_video_arr, outputs, output_path = None, fps = 30)
¶
Convert the pose information into the percent of pixels in the detection bounding box that correspond to each part of the anatomy in a video.
Parameters¶
numpy array (unit8) BGR
The numpy array the video after the texture has been visualized (by calling DensePoseManager.visualize_video).
outputs
The outputs from running DensePoseManager.predict*
Returns¶
numpy array (unit8) BGR DensePose outputs visualized on top of the image.
Source code in zamba/models/densepose/densepose_manager.py
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deserialize_output(instances_dict = None, filename = None)
¶
Source code in zamba/models/densepose/densepose_manager.py
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predict(image_arr)
¶
Main call to DensePose for inference. Runs inference on an image array.
Parameters¶
numpy array
BGR image array
Returns¶
Instances Detection instances with boxes, scores, and densepose estimates.
Source code in zamba/models/densepose/densepose_manager.py
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predict_image(image)
¶
Run inference to get the densepose results for an image.
Parameters¶
image
numpy array (unit8) of an image in BGR format or path to an image
Returns¶
tuple Returns the image array as passed or loaded and the the densepose Instances as results.
Source code in zamba/models/densepose/densepose_manager.py
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predict_video(video, video_loader_config = None, pbar = True)
¶
Run inference to get the densepose results for a video.
Parameters¶
video
numpy array (uint8) of a a video in BGR layout with time dimension first or path to a video
VideoLoaderConfig, optional
A video loader config for loading videos (uses all defaults except pix_fmt="bgr24")
Returns¶
tuple Tuple of (video_array, list of densepose results per frame)
Source code in zamba/models/densepose/densepose_manager.py
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serialize_image_output(instances, filename = None, write_embeddings = False)
¶
Convert the densepose output into Python-native objects that can be written and read with json.
Parameters¶
Instance
The output from the densepose model
(str, Path), optional
If not None, the filename to write the output to, by default None
Source code in zamba/models/densepose/densepose_manager.py
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serialize_video_output(instances, filename = None, write_embeddings = False)
¶
Source code in zamba/models/densepose/densepose_manager.py
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visualize_image(image_arr, outputs, output_path = None)
¶
Visualize the pose information.
Parameters¶
numpy array (unit8) BGR
The numpy array representing the image.
outputs
The outputs from running DensePoseManager.predict*
str or Path, optional
If not None, write visualization to this path; by default None
Returns¶
numpy array (unit8) BGR DensePose outputs visualized on top of the image.
Source code in zamba/models/densepose/densepose_manager.py
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visualize_video(video_arr, outputs, output_path = None, frame_size = None, fps = 30, pbar = True)
¶
Visualize the pose information on a video
Parameters¶
numpy array (unit8) BGR, time first
The numpy array representing the video.
outputs
The outputs from running DensePoseManager.predict*
str or Path, optional
If not None, write visualization to this path (should be .mp4); by default None
(innt, float), optional
If frame_size is float, scale up or down by that float value; if frame_size is an integer, set width to that size and scale height appropriately.
int
frames per second for output video if writing; defaults to 30
Returns¶
numpy array (unit8) BGR DensePose outputs visualized on top of the image.
Source code in zamba/models/densepose/densepose_manager.py
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