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Thermal infrared and visible sequences fusion tracking based on a hybrid tracking framework with adaptive weighting scheme

机译:具有自适应加权方案的混合跟踪框架的热红外和可见序列融合跟踪

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摘要

Object tracking based on single sensor image sequences is now proved to be insufficient when facing complex challenging factors such as occlusions, background clutter, illumination variations, deformation and scale change. Complementary information between thermal infrared and visible image sequences is highly valuable and plays a critical role in tracking under complex scenarios. Previous fusion-before-tracking algorithms are not efficient and accurate enough due to the inevitable introduction of redundant information and considerable computational consumption. In this paper, we propose a robust fusion tracking method that exploits the abovementioned complementary information under a hybrid "tracking-by-detection" framework which consists of two tracking modules-the correlation filter based tracking (CFF) module and histogram based tracking (HIST) module. In CFT module, features extracted from both thermal infrared and visible images such as histogram of oriented gradient (HOG), image intensity and color names, are utilized to generate response maps and then adaptively fused through a denoising fusion scheme. In HIST module, a response map is obtained by adopting RGB color histogram in a statistical tracking model. Then, the response maps of two modules are fused via a new adaptive weighting scheme we proposed. Extensive experimental results on challenging thermal infrared and visible image sequences demonstrate the accuracy and robustness of the proposed method in comparison with several state-of-the-art methods.
机译:当面对遮挡,背景杂波,照明变化,变形和刻度变形等复杂挑战因素时,现在证明基于单个传感器图像序列的对象跟踪不足。热红外和可见图像序列之间的互补信息是非常有价值的,在复杂的情景下跟踪中发挥着关键作用。由于冗余信息的不可避免地引入和相当大的计算消耗,以前的融合前跟踪算法不够高且足够的准确性。在本文中,我们提出了一种强大的融合跟踪方法,该方法利用混合“跟踪 - 逐个检测”框架下的上述互补信息,该框架由两个跟踪模块组成 - 基于相关滤波器的跟踪(CFF)模块和基于直方图的跟踪(steg ) 模块。在CFT模块中,利用从热红外和可见图像中提取的特征,例如取向梯度(HOG),图像强度和颜色名称的直方图,以产生响应图,然后通过去噪融合方案自适应地融合。在HOST模块中,通过在统计跟踪模型中采用RGB颜色直方图获得响应图。然后,通过我们提出的新的自适应加权方案融合两个模块的响应映射。关于挑战性的热红外和可见图像序列的广泛实验结果证明了与多种最先进的方法相比,所提出的方法的准确性和稳健性。

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