SpiderID_APP:使用基于 YOLO 的深度学习模型识别台湾蜘蛛的用户友好型 APP

IF 2.1 Q2 ENGINEERING, MULTIDISCIPLINARY Inventions Pub Date : 2023-12-06 DOI:10.3390/inventions8060153
Cao Thang Luong, Ali Farhan, Ross D. Vasquez, M. J. Roldan, Yih-Kai Lin, Shih-Yen Hsu, Ming-Der Lin, Chung-Der Hsiao, Chih-Hsin Hung
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引用次数: 0

摘要

准确、快速的分类识别是蜘蛛图像识别的第一步。据估计,全世界有超过5万种蜘蛛;然而,由于它们在物理结构上的形态相似性,它们的鉴定仍然具有挑战性。深度学习是计算机科学、生物医学科学和生物信息学领域的一项已知的现代技术。在深度学习的帮助下,揭示先进的分类方法有了新的机会。在本研究中,我们采用基于深度学习的方法,利用YOLOv7框架,为台湾蜘蛛物种提供了一个高效且用户友好的识别工具——蜘蛛识别APP (SpiderID_APP)。YOLOv7模型集成为一个全连接的神经网络。该模型的训练是在从免费的注释数据库iNaturalist中检索的24,000张图像上进行的。我们提供台湾蜘蛛种类的120个属分类,结果显示准确度与iNaturalist相当。此外,所提出的SpiderID_APP具有时间和成本效益,研究人员和公民科学家可以将此APP作为在台湾进行蜘蛛鉴定的初始切入点。然而,为了在物种水平上进行详细的物种鉴定,仍然需要DNA条形码或生殖器结构解剖等额外的方法。
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SpiderID_APP: A User-Friendly APP for Spider Identification in Taiwan Using YOLO-Based Deep Learning Models
Accurate and rapid taxonomy identification is the initial step in spider image recognition. More than 50,000 spider species are estimated to exist worldwide; however, their identification is still challenging due to the morphological similarity in their physical structures. Deep learning is a known modern technique in computer science, biomedical science, and bioinformatics. With the help of deep learning, new opportunities are available to reveal advanced taxonomic methods. In this study, we applied a deep-learning-based approach using the YOLOv7 framework to provide an efficient and user-friendly identification tool for spider species found in Taiwan called Spider Identification APP (SpiderID_APP). The YOLOv7 model is integrated as a fully connected neural network. The training of the model was performed on 24,000 images retrieved from the freely available annotated database iNaturalist. We provided 120 genus classifications for Taiwan spider species, and the results exhibited accuracy on par with iNaturalist. Furthermore, the presented SpiderID_APP is time- and cost-effective, and researchers and citizen scientists can use this APP as an initial entry point to perform spider identification in Taiwan. However, for detailed species identification at the species level, additional methods like DNA barcoding or genitalic structure dissection are still considered necessary.
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来源期刊
Inventions
Inventions Engineering-Engineering (all)
CiteScore
4.80
自引率
11.80%
发文量
91
审稿时长
12 weeks
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