基于深度学习方法的鱼类分类模型的发展趋势及综述

M. Bhanumathi, B. Arthi
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引用次数: 0

摘要

鱼类自动分类系统对于在复杂的水下背景下对海洋物种和鱼类进行跟踪、分类和检测是非常必要的。现有的基于计算机视觉的方法无法提供有效的水下性能,因为鱼类的纹理特征和形状并不明显。数据驱动的分类方法需要大量的标记数据,否则会导致在数据训练时过度拟合,并且无法利用未见过的测试数据进行训练。来自不同生物学领域的生态学家、研究人员、分类学家和遗传学家都希望接受鱼作为他们研究的重要组成部分。他们被劝阻去寻找鱼类学,这是一项非常复杂的任务。在以鱼类为基础的研究中,未能将鱼类视为独特的生物单位可能导致错误的诊断。因此,本文试图对物种识别算法分类的最新研究进行讨论和澄清。这篇综述探讨了比较的绩效指标、识别的鱼类科/物种数量、使用的数据集和用于实施的工具。展望了未来的研究方向和弥补现有研究空白的途径。对最先进的鱼类识别工具的回顾显示了它们在现实生活中提供正确解决方案的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Future Trends and Short-Review on Fish Species Classification Models Based on Deep Learning Approaches
An automatic fish species classification system is highly essential to track, classify and detect marine species and fishes in complex underwater backgrounds without any manual help. Existing computer vision-based approaches didn't offer effective performance rates underwater because the textural features and shape of fish species are not apparent. The data-driven classification approach needsa superior amount of labeled data;otherwise, they leadtooverfitting at the time of data training, and also, the unseen test data are not utilized for training.Ecologists, researchers, taxonomists, and geneticists from different biological fields wished to accept fish as a significant element in their research. Theywere discouraged from finding ichthyology,a highly complex task. In fish-based studies, failing to recognize fishes as distinct biological units can lead to thewrong diagnosis. Hence, this survey paper tries to discuss and clarify the recent research on species identification with their algorithmic categorization. This review explores the performance measures compared, the number of fish families/species recognized, datasets used, and tools utilized for implementation. Further, future research directions and compensation for current research gaps are discussed. This review of state-of-the-art fish identification tools shows their potential for providing the right solution in real-life situations.
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