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| | import copy
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| | import json
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| | import os, io
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| | from typing import Dict, List, Optional, Tuple, Union
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| | import numpy as np
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| | import torch
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| | def get_tracks_inference(tracks, height, width, quant_multi: Optional[int] = 8, **kwargs):
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| | if isinstance(tracks, str):
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| | tracks = torch.load(tracks)
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| | tracks_np = unzip_to_array(tracks)
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| | tracks = process_tracks(
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| | tracks_np, (width, height), quant_multi=quant_multi, **kwargs
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| | )
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| | return tracks
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| | def unzip_to_array(
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| | data: bytes, key: Union[str, List[str]] = "array"
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| | ) -> Union[np.ndarray, Dict[str, np.ndarray]]:
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| | bytes_io = io.BytesIO(data)
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| | if isinstance(key, str):
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| | with np.load(bytes_io) as data:
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| | return data[key]
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| | else:
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| | get = {}
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| | with np.load(bytes_io) as data:
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| | for k in key:
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| | get[k] = data[k]
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| | return get
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| | def process_tracks(tracks_np: np.ndarray, frame_size: Tuple[int, int], quant_multi: int = 8, **kwargs):
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| | tracks = torch.from_numpy(tracks_np).float() / quant_multi
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| | if tracks.shape[1] == 121:
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| | tracks = torch.permute(tracks, (1, 0, 2, 3))
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| | tracks, visibles = tracks[..., :2], tracks[..., 2:3]
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| | short_edge = min(*frame_size)
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| | tracks = tracks - torch.tensor([*frame_size]).type_as(tracks) / 2
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| | tracks = tracks / short_edge * 2
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| | visibles = visibles * 2 - 1
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| | trange = torch.linspace(-1, 1, tracks.shape[0]).view(-1, 1, 1, 1).expand(*visibles.shape)
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| | out_ = torch.cat([trange, tracks, visibles], dim=-1).view(121, -1, 4)
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| | out_0 = out_[:1]
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| | out_l = out_[1:]
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| | out_l = torch.repeat_interleave(out_l, 2, dim=0)[1::3]
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| | return torch.cat([out_0, out_l], dim=0)
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