Fine-Grained Butterfly Recognition with Deep Residual Networks: A New Baseline and Benchmark

Lin Nie, Keze Wang, Xiaoling Fan, Yuefang Gao
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引用次数: 6

Abstract

Thanks to the advances in deep learning techniques and the increasing size of training data, ground- breaking progress on image classification has recently been achieved. However, focusing on distinguishing usually hundreds of sub-categories belonging to the same basic-level category, fine- grained recognition of unusual natural object categories (e.g., a special type of insect) still remains challenging and needs to be solved. Due to mainly lack of sufficient annotated data, the state-of-the-art image classification approaches cannot well adapt to address the fine-grained challenges. In this paper, we study the problem of fine-grained butterfly recognition by introducing a new large-scale benchmark, which includes 82 butterfly categories. Moreover, we perform empirical study of the existing state-of-the-art image classification approaches and adopt ResNet as a new baseline. Extensive experiments under empirical settings demonstrate the superiority of the proposed baseline.
基于深度残差网络的细粒度蝴蝶识别:一种新的基线和基准
由于深度学习技术的进步和训练数据规模的增加,最近在图像分类方面取得了突破性的进展。然而,关注于区分通常属于同一基本类别的数百个子类别,对异常自然物体类别(例如特殊类型的昆虫)的细粒度识别仍然是一个挑战,需要解决。由于缺乏足够的标注数据,目前的图像分类方法不能很好地适应细粒度的挑战。在本文中,我们通过引入一个新的大规模基准来研究细粒度蝴蝶识别问题,该基准包含82个蝴蝶类别。此外,我们对现有的最先进的图像分类方法进行了实证研究,并采用ResNet作为新的基线。在经验设置下的大量实验证明了所提出的基线的优越性。
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