Beyond pixel-wise supervision for segmentation: A few global shape descriptors might be surprisingly good!
Hoel Kervadec, Houda Bahig, Laurent Letourneau-Guillon, Jose, Dolz, Ismail Ben Ayed

TL;DR
This paper explores the use of global shape descriptors as standalone losses for training deep segmentation networks, reducing annotation effort and potentially improving generalization across modalities.
Contribution
It introduces and evaluates shape descriptors as effective, annotation-free segmentation losses, demonstrating their surprising performance compared to traditional pixel-wise supervision.
Findings
As few as 4 shape descriptors can approach full-mask segmentation performance.
Shape descriptors encode anatomical priors without additional annotations.
Descriptors may improve generalization across image modalities.
Abstract
Standard losses for training deep segmentation networks could be seen as individual classifications of pixels, instead of supervising the global shape of the predicted segmentations. While effective, they require exact knowledge of the label of each pixel in an image. This study investigates how effective global geometric shape descriptors could be, when used on their own as segmentation losses for training deep networks. Not only interesting theoretically, there exist deeper motivations to posing segmentation problems as a reconstruction of shape descriptors: Annotations to obtain approximations of low-order shape moments could be much less cumbersome than their full-mask counterparts, and anatomical priors could be readily encoded into invariant shape descriptions, which might alleviate the annotation burden. Also, and most importantly, we hypothesize that, given a task, certain…
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Taxonomy
TopicsAdvanced Neural Network Applications · Medical Image Segmentation Techniques · Domain Adaptation and Few-Shot Learning
