Real-time multiple object tracking in smart environments

Wei You, Hao Jiang, Ze-Nian Li
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引用次数: 11

Abstract

We propose a real-time multiple object tracking method for smart environment applications. The proposed method combines identity features and tracking features for robust long-term object tracking. Face is a stable feature for identifying different subjects. However, face is not reliable for object tracking. Whole body color histogram is more resistant to object scale and pose changes, which has been widely applied in short-term object tracking. Unfortunately, color histograms are not stable over a relatively long period of time. In smart environments, same subjects may have different clothes over a long time span. We propose a method to combine these two features, the identity features and tracking features, to achieve reliable multiple object tracking in smart environments. A fast object labeling approach is proposed to track multiple objects in real time. The proposed method has clear advantage over traditional single feature methods. Experiments confirm that the proposed method can reliably track multiple human objects in real time through long video sequences.
智能环境下的实时多目标跟踪
提出了一种用于智能环境应用的实时多目标跟踪方法。该方法将身份特征与跟踪特征相结合,实现了对目标的鲁棒长期跟踪。人脸是识别不同主体的稳定特征。然而,人脸对目标跟踪并不可靠。全身颜色直方图具有较强的抵抗物体尺度和姿态变化的能力,在短期目标跟踪中得到了广泛的应用。不幸的是,颜色直方图在相当长的一段时间内并不稳定。在智能环境中,相同的受试者可能在很长一段时间内穿着不同的衣服。我们提出了一种将身份特征和跟踪特征相结合的方法,以实现智能环境下可靠的多目标跟踪。为了实时跟踪多目标,提出了一种快速目标标记方法。与传统的单特征方法相比,该方法具有明显的优势。实验证明,该方法可以在长视频序列中可靠地实时跟踪多个人体目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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