A Framework for Symmetric Part Detection in Cluttered Scenes
Tom Lee, Sanja Fidler, Alex Levinshtein, Cristian Sminchisescu, and, Sven Dickinson

TL;DR
This paper presents a computational framework that leverages symmetry and medial axis concepts to detect and group object parts in cluttered scenes, addressing challenges in recognition tasks without relying on figure-ground segmentation.
Contribution
It introduces a novel approach that models medial axis components as superpixels, enabling symmetry-based part detection in complex, cluttered images.
Findings
Effective in cluttered scene analysis
Improves part detection accuracy
Bridges medial axis theory with practical recognition
Abstract
The role of symmetry in computer vision has waxed and waned in importance during the evolution of the field from its earliest days. At first figuring prominently in support of bottom-up indexing, it fell out of favor as shape gave way to appearance and recognition gave way to detection. With a strong prior in the form of a target object, the role of the weaker priors offered by perceptual grouping was greatly diminished. However, as the field returns to the problem of recognition from a large database, the bottom-up recovery of the parts that make up the objects in a cluttered scene is critical for their recognition. The medial axis community has long exploited the ubiquitous regularity of symmetry as a basis for the decomposition of a closed contour into medial parts. However, today's recognition systems are faced with cluttered scenes, and the assumption that a closed contour exists,…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Neural Network Applications · Advanced Image and Video Retrieval Techniques
