Fusing well-crafted feature descriptors for efficient fine-grained classification

Andrea Britto Mottos, R. Feris
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引用次数: 7

Abstract

As citizen science projects become more popular and engage an increasing number of volunteers, smartphones are turning into commonly used sensors in the biodiversity environment. In this paper, we propose a novel approach for classification of subordinate categories such as plant and insect species that is fast and suitable for use in mobile devices. In particular, we show that a combination of carefully designed features, including a robust shape descriptor to capture fine morphological structures of objects, as well as traditional color and texture features, is essential for obtaining good performance. A novel weighting technique assigns different costs to each feature, taking into account the inter-class and intra-class variation between species. We tested our proposed method in the popular Oxford Flower Dataset and in the Leeds Butterfly Dataset. We are able to achieve state-of-the-art accuracy while proposing an efficient approach that is suitable for mobile applications and can be applied to different species.
融合精心设计的特征描述符,实现高效的细粒度分类
随着公民科学项目越来越受欢迎,越来越多的志愿者参与其中,智能手机正在成为生物多样性环境中常用的传感器。在本文中,我们提出了一种新的方法来分类从属类别,如植物和昆虫物种,是快速和适合在移动设备中使用。特别是,我们表明精心设计的特征的组合,包括捕获物体精细形态结构的鲁棒形状描述符,以及传统的颜色和纹理特征,对于获得良好的性能至关重要。一种新的加权技术为每个特征分配不同的代价,同时考虑到物种之间的类间和类内变化。我们在流行的牛津花数据集和利兹蝴蝶数据集中测试了我们提出的方法。我们能够达到最先进的精度,同时提出一种适用于移动应用程序的有效方法,可以应用于不同的物种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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