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Shrinking Encoding with Two-Level Codebook Learning for Fine-Grained Fish Recognition

机译:收缩编码与两级密码本学习,用于细粒鱼类识别

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摘要

Bag-of-features (BoF) shows a great power in representing images for image classification. Many codebook learning methods have been developed to find discriminative parts of images for fine-grained recognition. Built upon BoF framework, we propose a novel approach for finegrained fish recognition with two-level codebook learning by shrinking coding coefficients. In the framework, only the maximum-valued coefficient will be maintained in the local spatial region if followed by max pooling strategy. However, the maximum-valued coefficient may result from a local descriptor which is not discriminative among fine-grained classes, resulting in difficulty in classification. In this paper, a two-level codebook is learned to represent the importance between the local descriptor and each codeword in its corresponding k-nearest neighbors. A shrinkage function is also introduced to shrink unrelated coefficients after encoding. Our experimental results show that the proposed method achieves significant performance improvement for fine-grained fish recognition tasks.
机译:功能袋(BoF)在表示图像以进行图像分类方面显示出强大的功能。已经开发了许多密码本学习方法来找到图像的可辨别部分以进行细粒度识别。在BoF框架的基础上,我们提出了一种新颖的方法,通过缩小编码系数,通过两级码本学习来识别细粒度的鱼类。在该框架中,如果遵循最大池化策略,则只有最大值系数会保留在局部空间区域中。但是,最大值系数可能是由局部描述符产生的,该局部描述符在细粒度类之间没有区别,从而导致分类困难。在本文中,学习了两级码本,以表示本地描述符和其对应的k最近邻居中的每个码字之间的重要性。还引入了收缩函数以在编码之后收缩不相关的系数。我们的实验结果表明,提出的方法在细粒鱼识别任务上实现了显着的性能改进。

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