Image classification based on hash codes and space pyramid

Peng Tian-qiang, Li Fang
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引用次数: 1

Abstract

Sparse Coding is a widely used method to represent an image. However, sparse coding and its improved algorithms have the problem of complex computation and long running time and so on. For these problems, we propose an image classification method based on hash codes and space pyramid, which encodes local feature points with hash codes instead of sparse coding. Firstly, extract the local feature points from the images. Second, learn binary auto-encoder hashing functions, which map the local feature points into hash codes. Third, perform binary k-means cluster on the binary hash codes and generate the binary visual vocabularies. Finally, Combine with spatial pyramid matching model, and represent the image by the histogram vector of space pyramid, which is used in image classification. Experimental results show that compared with other sparse coding methods, our method has the shorter time of learning vocabularies and faster encoder speed and higher classification accuracy.
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基于哈希码和空间金字塔的图像分类
稀疏编码是一种广泛使用的图像表示方法。然而,稀疏编码及其改进算法存在计算量大、运行时间长等问题。针对这些问题,我们提出了一种基于哈希码和空间金字塔的图像分类方法,用哈希码代替稀疏编码对局部特征点进行编码。首先,从图像中提取局部特征点;其次,学习二进制自编码器哈希函数,它将局部特征点映射到哈希码中。第三,对二进制哈希码进行二进制k-means聚类,生成二进制视觉词汇表。最后,结合空间金字塔匹配模型,用空间金字塔直方图向量表示图像,用于图像分类。实验结果表明,与其他稀疏编码方法相比,我们的方法学习词汇的时间更短,编码器速度更快,分类精度更高。
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