HeatmapMHCRNNHead
- class lightning_pose.models.heads.HeatmapMHCRNNHead
Bases:
ModuleMulti-head convolutional recurrent neural network head.
This head converts a sequence of 2D feature maps to per-keypoint heatmaps for the center frame. The head is composed of two heads: - single frame head: several deconvolutional layers followed by a 2D spatial softmax to
generate normalized heatmaps from low-resolution feature maps for a single frame.
multi-frame head: several deconvolutional layers are applied to each set of features in a temporal sequence; the resulting heatmaps are fed into a convolutional recurrent neural network to produce heatmaps for the center frame
Methods Summary
forward(features, batch_shape, is_multiview)Handle context frames then upsample to get final heatmaps.
run_subpixelmaxima(heatmaps)Methods Documentation
- forward(features: Tensor, {'__torchtyping__': True, 'details': ('batch', 'features', 'rep_height', 'rep_width', 'frames'), 'cls_name': 'TensorType'}], batch_shape: tensor, is_multiview: bool) Tensor, {'__torchtyping__': True, 'details': ('batch', 'num_keypoints', 'heatmap_height', 'heatmap_width',), 'cls_name': 'TensorType'}]][source]
Handle context frames then upsample to get final heatmaps.
- Parameters:
features – outputs of backbone
batch_shape – identifies whether or not we need to do some reshaping
is_multiview – if batch has a view dimension
- __init__(backbone_arch: str, in_channels: int, out_channels: int, deconv_out_channels: int | None = None, downsample_factor: int = 2, upsampling_factor: int = 2)[source]
- Parameters:
backbone_arch – string denoting backbone architecture; to remove in future release
in_channels – number of channels in the input feature map
out_channels – number of channels in the output heatmap (i.e. number of keypoints)
deconv_out_channels – output channel number for each intermediate deconv layer; defaults to number of keypoints
downsample_factor – make heatmaps smaller than input frames by this factor; subpixel operations are performed for increased precision
upsampling_factor – upsample features before feeding to crnn
- __new__(**kwargs)