基于多方向上下文特征的目标类别识别套索筛选

Danfei Shen, Guitao Cao, Dan Meng
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引用次数: 0

摘要

当数据集较大时,基于局部特征和稀疏编码的图像表示在图像分类中起着非常重要的作用。尽管SC在世界范围内得到了广泛的应用,但在分类效率和训练编码短语的计算投入方面仍有一定的提高空间。本文从两个方面提出了一种新的对象类别识别方法。首先,充分利用图像patch之间的上下文相关性,将每个子patch的局部特征与相邻子patch合并为强上下文特征,生成多个稀疏表示,分别由SC和多尺度最大池化SPM(Spatial Pyramid Matching)接收。其次,在计算SC的稀疏系数时,需要解决l1正则化最小二乘问题。在求解Lasso问题之前,筛选出零系数并丢弃相应的非活动码字,可以显著加快优化速度。该方法在几个基准的大量图像分类实验中表现优于最先进的性能:地面真相数据集(21土地使用数据库),事件数据集(UIUC-Sport数据集)和目标识别数据集(Caltech101数据集)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lasso Screening for Object Categories Recognition Using Multi-directional Context Features
Image representation using local features and sparse coding (SC) plays a very important role in image classification when the dataset is fairly large. Despite of its worldwide popularity, there are still some improving space in classification efficiency and computational investment in training and coding phrase of SC. In this paper, we put forward a novel object categories recognition method from two aspects. First, the contextual relevance between image patches are fully utilized by merging local feature of every sub-patch with its neighboring ones into strong context features to generate the multiple sparse representations, which are received by the SC and multi-scale max pooling SPM(Spatial Pyramid Matching), respectively. Second, while calculating the sparse coefficients of SC, we need to solve L1-regularized least square problem. Screening out the zero coefficients and discarding the corresponding inactive codewords before solving Lasso problem can remarkably speed up the optimization. The proposed method outperforms state-of-the-art performancein a large number of image categorization experiments on several benchmarks: the ground truth dataset (21 Land-Use database), the event dataset (UIUC-Sport dataset), and the object recognition dataset (Caltech101 dataset).
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