Self-calibrated acceleration and detail preserving for semantic segmentation of lactating sows and piglets under low-light conditions
Aqing Yang, Yueju Xue, Na Han, Jiabi Zheng, Lei Zhang, Yizhi Luo

TL;DR
This paper introduces a new image enhancement method to improve the accuracy of identifying lactating sows and piglets in low-light conditions.
Contribution
A novel low-light enhancement method called SADP is proposed, which improves segmentation performance and computational efficiency.
Findings
SADP improved execution time from 0.0163s to 0.0033s and reduced model size from 0.0034M to 0.0003M.
The mean IOU for semantic segmentation increased from 0.8686 to 0.8872 with SADP.
SADP can also enhance other high-level visual tasks in livestock monitoring.
Abstract
Pixel-wise semantic segmentation of lactating sows and piglets is critical to explore maternal traits in smart livestock breeding and production. However, semantic segmentation algorithms do not yield satisfactory results under low-light conditions because these methods are highly dependent on image quality. Therefore, an efficient and detail-preserving low-light image enhancement is necessary and crucial for animal monitoring under low-light conditions. In this paper, a low-light enhancement method called self-calibrated acceleration and detail preserving (SADP) was proposed to improve the semantic segmentation performance of lactating sows and piglets. Specifically, a self-calibration acceleration module that accelerated the convergence among all stages was proposed to improve the computational efficiency and a semantic perceptual loss term was proposed for a high detail and semantic…
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Taxonomy
TopicsImage Enhancement Techniques · Smart Agriculture and AI · Industrial Vision Systems and Defect Detection
