Segnet公布:通过严格的K-fold交叉验证分析进行鲁棒图像分割。

IF 1.4 4区 医学 Q4 ENGINEERING, BIOMEDICAL
Technology and Health Care Pub Date : 2025-03-01 Epub Date: 2024-11-20 DOI:10.1177/09287329241290954
Ignatious K Pious, R Srinivasan
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引用次数: 0

摘要

在计算机视觉中,从自动驾驶到医学成像,图像分割是至关重要的。目的为了在不同的数据集上提供可靠的图像分割,本研究评估了基于SegNet的图像分割模型的性能。方法使用5倍和k倍交叉验证方法,对SegNet模型进行彻底验证。在研究中测量了联合交叉点(IOU)、骰子系数、精度、召回率、准确性和损失指标,以评估模型的性能和在整个训练过程中的优化程度。结果SegNet模型在整个折叠过程中始终表现良好,Dice Coefficient值在88.32% ~ 89.8%之间,IOU得分在94.53% ~ 95.05%之间。模型的可靠性由精度、召回率和准确度等指标来证实,这些指标通常都超过90%。损失值在0.495 ~ 0.547之间表明训练有效地优化了系统。通过提高验证可靠性,K-fold交叉验证方法突出了SegNet模型在一系列数据集上分割图像中的对象的方式。这些结果增强了对模型泛化能力的信心,并突出了其在图像分割中的几个实际应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segnet unveiled: Robust image segmentation via rigorous K-fold cross-validation analysis.

BackgroundIn computer vision, image segmentation is crucial with applications ranging from autonomous driving to medical imaging.ObjectiveTo provide reliable segmentation across varied datasets, this study assesses the performance of an image segmentation model based on SegNet.MethodUsing a five-fold and a K-fold cross-validation method, the SegNet model is thoroughly validated. Intersection over Union (IOU), Dice Coefficient, Precision, Recall, Accuracy, and loss metrics are measured in the study to assess how well the model performs and is optimized throughout training.ResultsThe SegNet model consistently performs well throughout the folds, with Dice Coefficient values ranging from 88.32% to 89.8% and IOU scores ranging from 94.53% to 95.05%. The model's dependability is confirmed by metrics like precision, recall, and accuracy, all of which often exceed 90%. Loss values between 0.495 and 0.547 show that training optimized the system effectively.ConclusionBy enhancing the validation reliability, the K-fold cross-validation method highlights by what means the SegNet model segments objects in images across a range of datasets. These outcomes strengthen the confidence in the model's ability to generalize and highlight its potential for several practical uses in image segmentation.

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来源期刊
Technology and Health Care
Technology and Health Care HEALTH CARE SCIENCES & SERVICES-ENGINEERING, BIOMEDICAL
CiteScore
2.10
自引率
6.20%
发文量
282
审稿时长
>12 weeks
期刊介绍: Technology and Health Care is intended to serve as a forum for the presentation of original articles and technical notes, observing rigorous scientific standards. Furthermore, upon invitation, reviews, tutorials, discussion papers and minisymposia are featured. The main focus of THC is related to the overlapping areas of engineering and medicine. The following types of contributions are considered: 1.Original articles: New concepts, procedures and devices associated with the use of technology in medical research and clinical practice are presented to a readership with a widespread background in engineering and/or medicine. In particular, the clinical benefit deriving from the application of engineering methods and devices in clinical medicine should be demonstrated. Typically, full length original contributions have a length of 4000 words, thereby taking duly into account figures and tables. 2.Technical Notes and Short Communications: Technical Notes relate to novel technical developments with relevance for clinical medicine. In Short Communications, clinical applications are shortly described. 3.Both Technical Notes and Short Communications typically have a length of 1500 words. Reviews and Tutorials (upon invitation only): Tutorial and educational articles for persons with a primarily medical background on principles of engineering with particular significance for biomedical applications and vice versa are presented. The Editorial Board is responsible for the selection of topics. 4.Minisymposia (upon invitation only): Under the leadership of a Special Editor, controversial or important issues relating to health care are highlighted and discussed by various authors. 5.Letters to the Editors: Discussions or short statements (not indexed).
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