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Papers/Motion Segmentation by Exploiting Complementary Geometric ...

Motion Segmentation by Exploiting Complementary Geometric Models

Xun Xu, Loong-Fah Cheong, Zhuwen Li

2018-04-06CVPR 2018 6Motion SegmentationSegmentationClustering
PaperPDFCode(official)

Abstract

Many real-world sequences cannot be conveniently categorized as general or degenerate; in such cases, imposing a false dichotomy in using the fundamental matrix or homography model for motion segmentation would lead to difficulty. Even when we are confronted with a general scene-motion, the fundamental matrix approach as a model for motion segmentation still suffers from several defects, which we discuss in this paper. The full potential of the fundamental matrix approach could only be realized if we judiciously harness information from the simpler homography model. From these considerations, we propose a multi-view spectral clustering framework that synergistically combines multiple models together. We show that the performance can be substantially improved in this way. We perform extensive testing on existing motion segmentation datasets, achieving state-of-the-art performance on all of them; we also put forth a more realistic and challenging dataset adapted from the KITTI benchmark, containing real-world effects such as strong perspectives and strong forward translations not seen in the traditional datasets.

Results

TaskDatasetMetricValueModel
Motion SegmentationKT3DMoSegError7.92MultiViewClustering
Motion SegmentationHopkins155Classification Error0.31MVC
Motion SegmentationMTPV62Classification Error0.65MVC

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