Logo Classification with Edge-Based DAISY Descriptor

B. Lei, V. Thing, Yu Chen, Wee-Yong Lim
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引用次数: 7

Abstract

For the classification of logo images, there are significant challenges in the classification of merchandise logos such that only a few key points can be found in the relatively small logo images due to large variations in texture, poor illumination and generally, lack of discriminative features. This paper addresses these difficulties by introducing an integrated approach to classify merchandise logos with the combination of local edge-based descriptor-DAISY, spatial histogram and salient region detection. During the training phase, after carrying out the edge extraction, merchandise logos are described with a set of SIFT-like DAISY descriptors which is computed efficiently and densely along edge pixels. Visual word vocabulary generation and spatial histogram are used for describing the images/regions. Saliency map for object detection is adopted to narrow down and localize the logos. The feature map for approximating a non-linear kernel is also used to facilitate the classification by a linear SVM classifier. The experimental results demonstrate that the Edge-based DAISY (EDAISY) descriptor outperforms the state-of-the-art SIFT and DSIFT descriptors in terms of classification accuracy on a set of collected logo image dataset.
基于边缘的DAISY描述符的标志分类
对于标志图像的分类,商品标志的分类面临着很大的挑战,在相对较小的标志图像中,由于纹理变化大,光照差,通常缺乏区分特征,只能找到几个关键点。本文通过引入一种结合局部边缘描述符daisy、空间直方图和显著区域检测的综合方法来解决这些困难。在训练阶段,在进行边缘提取之后,使用一组类似sift的DAISY描述符来描述商品徽标,该描述符沿着边缘像素高效且密集地计算。视觉词表生成和空间直方图用于描述图像/区域。采用目标检测的显著性映射来缩小和定位标识。近似非线性核的特征映射也被用来促进线性支持向量机分类器的分类。实验结果表明,基于边缘的DAISY (EDAISY)描述符在收集的一组徽标图像数据集上的分类精度优于最先进的SIFT和DSIFT描述符。
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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