41 lines
1.1 KiB
Python
41 lines
1.1 KiB
Python
import poselib
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import torch
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from omegaconf import OmegaConf
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from ..base_estimator import BaseEstimator
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class PoseLibHomographyEstimator(BaseEstimator):
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default_conf = {"ransac_th": 2.0, "options": {}}
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required_data_keys = ["m_kpts0", "m_kpts1"]
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def _init(self, conf):
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pass
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def _forward(self, data):
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pts0, pts1 = data["m_kpts0"], data["m_kpts1"]
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M, info = poselib.estimate_homography(
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pts0.detach().cpu().numpy(),
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pts1.detach().cpu().numpy(),
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{
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"max_reproj_error": self.conf.ransac_th,
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**OmegaConf.to_container(self.conf.options),
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},
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)
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success = M is not None
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if not success:
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M = torch.eye(3, device=pts0.device, dtype=pts0.dtype)
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inl = torch.zeros_like(pts0[:, 0]).bool()
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else:
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M = torch.tensor(M).to(pts0)
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inl = torch.tensor(info["inliers"]).bool().to(pts0.device)
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estimation = {
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"success": success,
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"M_0to1": M,
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"inliers": inl,
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}
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return estimation
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