OSTA: One-shot Task-adaptive Channel Selection for Semantic Segmentation of Multichannel Images
Yuanzhi Cai, Jagannath Aryal, Yuan Fang, Hong Huang, Lei Fan

TL;DR
This paper introduces OSTA, a novel one-shot method that integrates channel selection and training for semantic segmentation of multichannel images, achieving superior accuracy efficiently.
Contribution
The paper proposes the first use of supernet pruning for joint channel selection and segmentation network training, improving accuracy and efficiency.
Findings
OSTA outperforms exhaustive search in accuracy.
OSTA reduces computational time significantly.
Effective for various multichannel datasets.
Abstract
Semantic segmentation of multichannel images is a fundamental task for many applications. Selecting an appropriate channel combination from the original multichannel image can improve the accuracy of semantic segmentation and reduce the cost of data storage, processing and future acquisition. Existing channel selection methods typically use a reasonable selection procedure to determine a desirable channel combination, and then train a semantic segmentation network using that combination. In this study, the concept of pruning from a supernet is used for the first time to integrate the selection of channel combination and the training of a semantic segmentation network. Based on this concept, a One-Shot Task-Adaptive (OSTA) channel selection method is proposed for the semantic segmentation of multichannel images. OSTA has three stages, namely the supernet training stage, the pruning stage…
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Taxonomy
TopicsAdvanced Neural Network Applications · Medical Image Segmentation Techniques · Advanced Image and Video Retrieval Techniques
MethodsPruning
