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Discriminative feature learning for underwater fish recognition

机译:水下鱼识别的歧视特征学习

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摘要

Underwater fish recognition is an important task in fish stock assessment and marine ecosystem studies. Machine learning techniques have been applied to train high-performance fish recognition models from underwater images. However, underwater images often contain extremely noisy backgrounds, hindering the training of accurate recognition models. Traditional methods exploit handcrafted features to train traditional classifiers. These methods often suffer from low recognition accuracy and limited scalability to large-scale datasets. While deep learning approaches have been proposed, the challenge of learning with noisy underwater images has not yet been fully addressed. We propose a discriminative feature learning (DFL) framework to train accurate fish recognition models on noisy underwater images. By leveraging the idea of contrastive learning, DFL encourages the model to learn more discriminative features for images in different classes and similar features for images in the same class. To better address the noisy background problem, DFL also utilizes a regularization technique called attention suppression to prevent the model from paying too much attention to the noisy background. Experimental results on three benchmark datasets validate the superior performance of DFL over the current state-ofthe-art deep learning approaches. (c) 2021 SPIE and IS&T
机译:水下鱼识别是鱼类种群评估和海洋生态系统研究的重要任务。机器学习技术已被应用到从水下图像训练高性能鱼识别模型。然而,水下图像往往含有极其嘈杂的背景,阻碍了准确的识别模型的训练。传统的方法利用手工制作的特点,培养传统分类。这些方法经常遭受低的识别精度和有限的可扩展到大型数据集。虽然已经提出了深刻的学习方法,与嘈杂的水下图像学习的挑战还没有得到完全解决。我们提出了一个判别特征的学习(DFL)框架上嘈杂的水下图像训练精确的鱼识别模型。通过利用对比学习的理念,DFL鼓励模型,了解在不同类别的图像和类似的功能更有辨别力的功能在同一类的图像。为了更好地解决嘈杂的背景问题,DFL还使用一种被称作注意抑制以防止模型付出太多关注嘈杂的背景正则化技术。对三个标准数据集的实验结果验证了东风有限在当前国家国税发先进的深学习方法的优越性能。 (C)2021和SPIE IS&T

著录项

  • 来源
    《Journal of electronic imaging》 |2021年第2期|023020.1-023020.19|共19页
  • 作者单位

    Qinghai Normal Univ Dept Comp Sci Xining Peoples R China;

    Qinghai Normal Univ Dept Comp Sci Xining Peoples R China|Acad Plateau Sci & Sustainabil Xining Peoples R China;

    Lanzhou Univ Sch Informat Sci & Engn Lanzhou Peoples R China;

    Qinghai Normal Univ Dept Comp Sci Xining Peoples R China;

    Qinghai Normal Univ Dept Comp Sci Xining Peoples R China;

    Qinghai Normal Univ Dept Comp Sci Xining Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    underwater fish recognition; discriminative feature learning; deep learning;

    机译:水下鱼识别;歧视特征学习;深入学习;

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