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Autori principali: Chen, Wenyuan, Song, Haocong, Dai, Changsheng, Jiang, Aojun, Shan, Guanqiao, Liu, Hang, Zhou, Yanlong, Abdalla, Khaled, Dhanani, Shivani N, Moosavi, Katy Fatemeh, Pathak, Shruti, Librach, Clifford, Zhang, Zhuoran, Sun, Yu
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.00112
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author Chen, Wenyuan
Song, Haocong
Dai, Changsheng
Jiang, Aojun
Shan, Guanqiao
Liu, Hang
Zhou, Yanlong
Abdalla, Khaled
Dhanani, Shivani N
Moosavi, Katy Fatemeh
Pathak, Shruti
Librach, Clifford
Zhang, Zhuoran
Sun, Yu
author_facet Chen, Wenyuan
Song, Haocong
Dai, Changsheng
Jiang, Aojun
Shan, Guanqiao
Liu, Hang
Zhou, Yanlong
Abdalla, Khaled
Dhanani, Shivani N
Moosavi, Katy Fatemeh
Pathak, Shruti
Librach, Clifford
Zhang, Zhuoran
Sun, Yu
contents Traditional sperm morphology analysis is based on tedious manual annotation. Automated morphology analysis of a high number of sperm requires accurate segmentation of each sperm part and quantitative morphology evaluation. State-of-the-art instance-aware part segmentation networks follow a "detect-then-segment" paradigm. However, due to sperm's slim shape, their segmentation suffers from large context loss and feature distortion due to bounding box cropping and resizing during ROI Align. Moreover, morphology measurement of sperm tail is demanding because of the long and curved shape and its uneven width. This paper presents automated techniques to measure sperm morphology parameters automatically and quantitatively. A novel attention-based instance-aware part segmentation network is designed to reconstruct lost contexts outside bounding boxes and to fix distorted features, by refining preliminary segmented masks through merging features extracted by feature pyramid network. An automated centerline-based tail morphology measurement method is also proposed, in which an outlier filtering method and endpoint detection algorithm are designed to accurately reconstruct tail endpoints. Experimental results demonstrate that the proposed network outperformed the state-of-the-art top-down RP-R-CNN by 9.2% [AP]_vol^p, and the proposed automated tail morphology measurement method achieved high measurement accuracies of 95.34%,96.39%,91.2% for length, width and curvature, respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2408_00112
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automated Sperm Morphology Analysis Based on Instance-Aware Part Segmentation
Chen, Wenyuan
Song, Haocong
Dai, Changsheng
Jiang, Aojun
Shan, Guanqiao
Liu, Hang
Zhou, Yanlong
Abdalla, Khaled
Dhanani, Shivani N
Moosavi, Katy Fatemeh
Pathak, Shruti
Librach, Clifford
Zhang, Zhuoran
Sun, Yu
Computer Vision and Pattern Recognition
Traditional sperm morphology analysis is based on tedious manual annotation. Automated morphology analysis of a high number of sperm requires accurate segmentation of each sperm part and quantitative morphology evaluation. State-of-the-art instance-aware part segmentation networks follow a "detect-then-segment" paradigm. However, due to sperm's slim shape, their segmentation suffers from large context loss and feature distortion due to bounding box cropping and resizing during ROI Align. Moreover, morphology measurement of sperm tail is demanding because of the long and curved shape and its uneven width. This paper presents automated techniques to measure sperm morphology parameters automatically and quantitatively. A novel attention-based instance-aware part segmentation network is designed to reconstruct lost contexts outside bounding boxes and to fix distorted features, by refining preliminary segmented masks through merging features extracted by feature pyramid network. An automated centerline-based tail morphology measurement method is also proposed, in which an outlier filtering method and endpoint detection algorithm are designed to accurately reconstruct tail endpoints. Experimental results demonstrate that the proposed network outperformed the state-of-the-art top-down RP-R-CNN by 9.2% [AP]_vol^p, and the proposed automated tail morphology measurement method achieved high measurement accuracies of 95.34%,96.39%,91.2% for length, width and curvature, respectively.
title Automated Sperm Morphology Analysis Based on Instance-Aware Part Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.00112