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Commodity Image Classification Based on Improved Bag-of-Visual-Words Model

机译:基于改进袋 - 视觉词模型的商品图像分类

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With the increasing scale of e-commerce, the complexity of image content makes commodity image classification face great challenges. Image feature extraction often determines the quality of the final classification results. At present, the image feature extraction part mainly includes the underlying visual feature and the intermediate semantic feature. The intermediate semantics of the image acts as a bridge between the underlying features and the advanced semantics of the image, which can make up for the semantic gap to a certain extent and has strong robustness. As a typical intermediate semantic representation method, the bag-of-visual-words (BoVW) model has received extensive attention in image classification. However, the traditional BoVW model loses the location information of local features, and its local feature descriptors mainly focus on the texture shape information of local regions but lack the expression of color information. Therefore, in this paper, the improved bag-of-visual-words model is presented, which contains three aspects of improvement: (1) multiscale local region extraction; (2) local feature description by speeded up robust features (SURF) and color vector angle histogram (CVAH); and (3) diagonal concentric rectangular pattern. Experimental results show that the three aspects of improvement to the BoVW model are complementary, while compared with the traditional BoVW and the BoVW adopting SURF?+?SPM, the classification accuracy of the improved BoVW is increased by 3.60% and 2.33%, respectively.
机译:随着电子商务规模的增加,图像内容的复杂性使商品图像分类面临巨大挑战。图像特征提取通常确定最终分类结果的质量。目前,图像特征提取部分主要包括底层的视觉特征和中间语义特征。图像的中间语义用作底层特征与图像的高级语义之间的桥梁,这可以在一定程度上弥补语义差距并且具有强大的鲁棒性。作为典型的中间语义表示方法,袋 - 视袋(BOVW)模型在图像分类中受到广泛的关注。然而,传统的BOVW模型失去了本地特征的位置信息,其本地特征描述符主要关注局域区域的纹理形状信息,但缺乏颜色信息的表达。因此,在本文中,提出了改进的视觉袋模型,其中包含改进的三个方面:(1)多尺度局部区域提取; (2)通过加速鲁棒特征(冲浪)和彩色矢量角度直方图(CVAH)的本地特征描述; (3)对角线同心矩形图案。实验结果表明,与传统的BOVW和采用冲浪的鲍瓦瓦和鲍瓦布相比,对BOVW模型的改进的三个方面是互补的?+?SPM,改进的BOVW的分类精度分别增加了3.60%和2.33%。

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