The Right Spin: Learning Object Motion from Rotation-Compensated Flow Fields
Pia Bideau, Erik Learned-Miller, Cordelia Schmid, Karteek Alahari

TL;DR
This paper introduces a probabilistic model to estimate camera rotation from motion fields, enabling rotation compensation that improves object motion segmentation in complex scenes.
Contribution
It proposes a novel approach combining geometric estimation of camera rotation with deep learning for motion segmentation, enhancing accuracy over existing methods.
Findings
Improved segmentation results on DAVIS benchmark.
Enhanced motion understanding in camouflaged and complex scenes.
Effective separation of camera motion from object motion.
Abstract
Both a good understanding of geometrical concepts and a broad familiarity with objects lead to our excellent perception of moving objects. The human ability to detect and segment moving objects works in the presence of multiple objects, complex background geometry, motion of the observer and even camouflage. How humans perceive moving objects so reliably is a longstanding research question in computer vision and borrows findings from related areas such as psychology, cognitive science and physics. One approach to the problem is to teach a deep network to model all of these effects. This contrasts with the strategy used by human vision, where cognitive processes and body design are tightly coupled and each is responsible for certain aspects of correctly identifying moving objects. Similarly from the computer vision perspective, there is evidence that classical, geometry-based techniques…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Image and Video Retrieval Techniques · Visual Attention and Saliency Detection
