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Low-contrast Underwater Living Fish Recognition Using PCANet

机译:使用PCANet的低对比水下生活鱼识别

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Quantitative and statistical analysis of ocean creatures is critical to ecological and environmental studies. And living fish recognition is one of the most essential requirements for fishery industry. However, light attenuation and scattering phenomenon are present in the underwater environment, which makes underwater images low-contrast and blurry. This paper tries to design a robust framework for accurate fish recognition. The framework introduces a two stage PCA Network to extract abstract features from fish images. On a real-world fish recognition dataset, we use a linear SVM classifier and set penalty coefficients to conquer data unbalanced issue. Feature visualization results show that our method can avoid the feature distortion in boundary regions of underwater image. Experiments results show that the PCA Network can extract discriminate features and achieve promising recognition accuracy. The framework improves the recognition accuracy of underwater living fishes and can be easily applied to marine fishery industry.
机译:对海洋生物的定量和统计分析对生态和环境研究至关重要。生活鱼类识别是渔业行业最重要的要求之一。然而,水下环境存在光衰减和散射现象,其使水下图像低对比度和模糊。本文试图为精确的鱼识别设计一个强大的框架。该框架介绍了两级PCA网络,以从鱼类图像中提取抽象特征。在真实世界的鱼类识别数据集上,我们使用线性SVM分类器并设置惩罚系数以征服数据不平衡问题。特征可视化结果表明,我们的方法可以避免水下图像的边界区域中的特征失真。实验结果表明,PCA网络可以提取区分特征,实现有前途的识别准确性。该框架提高了水下生活鱼类的识别准确性,可以轻松应用于海洋渔业行业。

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