Extremely Dense Point Correspondences Using A Learned Feature Descriptor

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
High-quality 3D reconstructions from endoscopy video play an important role in many clinical applications, including surgical navigation where they enable direct video-CT registration. While many methods exist for general multi-view 3D reconstruction, these methods often fail to deliver satisfactory performance on endoscopic video. Part of the reason is that local descriptors that establish pairwise point correspondences, and thus drive reconstruction, struggle when confronted with the texture-scarce surface of anatomy. Learning-based dense descriptors usually have larger receptive fields enabling the encoding of global information, which can be used to disambiguate matches. In this work, we present an effective self-supervised training scheme and novel loss design for dense descriptor learning. In direct comparison to recent local and dense descriptors on an in-house sinus endoscopy dataset, we demonstrate that our proposed dense descriptor can generalize to unseen patients and scopes, thereby largely improving the performance of Structure from Motion (SfM) in terms of model density and completeness. We also evaluate our method on a public dense optical flow dataset and a small-scale SfM public dataset to further demonstrate the effectiveness and generality of our method. The source code is available at https://github.com/1pp11pp1920/DenseDescriptorLearning-Pytorch.
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关键词
extremely dense point correspondences,learned feature descriptor,high-quality 3D reconstructions,endoscopy video,clinical applications,surgical navigation,direct video-CT registration,endoscopic video,local descriptors,learning-based dense descriptors,self-supervised training scheme,loss design,dense descriptor learning,public dense optical flow dataset,general multiview 3D reconstruction,pair-wise point correspondences
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