稀疏特征追踪的多模态人体检测

J. Han, O. Loffeld, K. Hartmann
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引用次数: 0

摘要

多模态图像的人体检测是一项具有挑战性的信息提取任务,对后续的分类、识别、跟踪等步骤起着非常重要的作用。本文描述了一种创新的基于稀疏特征的多模态图像人体检测方法。首先,我们将人看作是随多模态图像序列移动的稀疏特征。然后,将一个矩阵分解为一个稀疏的人的矩阵和一个低秩的背景矩阵。此外,通过求解凸优化问题精确地恢复了两个分量。最后对包含人的稀疏特征进行重构,生成人的地图。在一种新型二维/三维视觉系统的真实多模态图像上的实验结果验证了该方法的有效性。同时也为矩阵分解在各种多模态数据分析中的潜在应用提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal human detection by sparse feature pursuit
Human detection from multimodal image is a challenging task of information extraction and plays a striking important role for the later steps such as classification, recognition, tracking, and so forth. This paper describes an innovative sparse feature-based approach for human detection using the multimodal image. Firstly we consider a human as sparse feature which moves with multimodal image sequences. And afterwards the problem of moving human estimation can be formulated as decomposition of a matrix into a sparse human matrix and a low-rank background matrix. Furthermore, both of the components are exactly recovered by solving convex optimization problem. Finally the sparse feature that contains human is reconstructed to generate the human map. Experimental results on the real multimodal image from a novel 2D/3D vision system verify the effectiveness of our proposed method. Meanwhile the results yield the potential application of matrix decomposition for various multimodal data analysis.
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