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Histogram Contextualization

机译:直方图语境化

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摘要

Histograms have been widely used for feature representation in image and video content analysis. However, due to the orderless nature of the summarization process, histograms generally lack spatial information. This may degrade their discrimination capability in visual classification tasks. Although there have been several research attempts to encode spatial context into histograms, how to extend the encodings to higher order spatial context is still an open problem. In this paper,we propose a general histogram contextualization method to encode efficiently higher order spatial context. The method is based on the cooccurrence of local visual homogeneity patterns and hence is able to generate more discriminative histogram representations while remaining compact and robust. Moreover, we also investigate how to extend the histogram contextualization to multiple modalities of context. It is shown that the proposed method can be naturally extended to combine both temporal and spatial context and facilitate video content analysis. In addition, a method to combine cross-feature context with spatial context via the technique of random forest is also introduced in this paper. Comprehensive experiments on face image classification and human activity recognition tasks demonstrate the superiority of the proposed histogram contextualization method compared with the existing encoding methods.
机译:直方图已广泛用于图像和视频内容分析中的特征表示。但是,由于汇总过程的无序性,直方图通常缺少空间信息。这可能会降低其在视觉分类任务中的辨别能力。尽管已经进行了一些研究尝试将空间上下文编码为直方图,但是如何将编码扩展到高阶空间上下文仍然是一个未解决的问题。在本文中,我们提出了一种通用的直方图语境化方法来有效编码高阶空间语境。该方法基于局部视觉均匀性模式的共现,因此能够在保持紧凑和鲁棒性的同时生成更具判别力的直方图表示。此外,我们还研究了如何将直方图上下文化扩展到上下文的多种形式。结果表明,所提出的方法可以自然地扩展以结合时间和空间上下文,并有助于视频内容分析。此外,本文还介绍了一种通过随机森林技术将跨功能上下文与空间上下文相结合的方法。在人脸图像分类和人类活动识别任务方面的综合实验表明,与现有的编码方法相比,该直方图上下文化方法具有优越性。

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