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Underwater Fish Species Classification using Convolutional Neural Network and Deep Learning

机译:基于卷积神经网络和深度学习的水下鱼类物种分类

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The target of this paper is to recommend a way for Automated classification of Fish species. A high accuracy fish classification is required for greater understanding of fish behavior in Ichthyology and by marine biologists. Maintaining a ledger of the number of fishes per species and marking the endangered species in large and small water bodies is required by concerned institutions. Majority of available methods focus on classification of fishes outside of water because underwater classification poses challenges such as background noises, distortion of images, the presence of other water bodies in images, image quality and occlusion. This method uses a novel technique based on Convolutional Neural Networks, Deep Learning and Image Processing to achieve an accuracy of 96.29%. This method ensures considerably discrimination accuracy improvements than the previously proposed methods.
机译:本文的目标是为鱼种的自动分类推荐一种方法。为了更好地了解鱼类学和海洋生物学家对鱼的行为,需要高精度的鱼分类。有关机构要求保持每个物种鱼类数量的分类帐,并在大小水域中标记濒危物种。由于水下分类带来了诸如背景噪声,图像失真,图像中存在其他水体,图像质量和遮挡之类的挑战,因此大多数可用方法都集中在水以外鱼类的分类上。该方法使用基于卷积神经网络,深度学习和图像处理的新颖技术,可达到96.29%的准确性。与先前提出的方法相比,该方法可确保显着提高判别准确性。

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