Thermal-Visible Video Fusion for Moving Target Tracking and Pedestrian Classification

A. Leykin, Yang Ran, R. Hammoud
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引用次数: 69

Abstract

The paper presents a fusion-tracker and pedestrian classifier for color and thermal cameras. The tracker builds a background model as a multi-modal distribution of colors and temperatures. It is constructed as a particle filter that makes a number of informed reversible transformations to sample the model probability space in order to maximize posterior probability of the scene model. Observation likelihoods of moving objects account their 3D locations with respect to the camera and occlusions by other tracked objects as well as static obstacles. After capturing the coordinates and dimensions of moving objects we apply a pedestrian classifier based on periodic gait analysis. To separate humans from other moving objects, such as cars, we detect, in human gait, a symmetrical double helical pattern, that can then be analyzed using the Frieze Group theory. The results of tracking on color and thermal sequences demonstrate that our algorithm is robust to illumination noise and performs well in the outdoor environments.
热视视频融合运动目标跟踪与行人分类
提出了一种适用于彩色相机和热像仪的融合跟踪器和行人分类器。跟踪器将背景模型构建为颜色和温度的多模态分布。它被构造为一个粒子滤波器,通过多次知情的可逆变换对模型概率空间进行采样,以最大化场景模型的后验概率。移动物体的观察可能性考虑了它们相对于相机和其他跟踪物体以及静态障碍物的遮挡的3D位置。在捕获运动物体的坐标和尺寸后,应用基于周期步态分析的行人分类器。为了将人类与其他运动物体(如汽车)区分开来,我们在人类的步态中检测到一种对称的双螺旋模式,然后可以使用Frieze群论对其进行分析。对颜色序列和热序列的跟踪结果表明,该算法对光照噪声具有较强的鲁棒性,在室外环境下具有良好的性能。
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