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Online learning neural tracker

机译:在线学习神经跟踪器

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Object tracking is a fundamental computer vision problem and is required for many high-level tasks such as activity recognition, behavior analysis and surveillance. The main challenge in the object tracking problem is the dynamic change in object/background appearance, illumination, shape and occlusion. We present an online learning neural tracker (OLNT) to differentiate the object from the background and also adapt to changes in object/background dynamics. For target modeling and object tracking, a neural algorithm based on risk sensitive loss function is proposed to handle issues related to sample imbalance and dynamics of object. Region-based features like region-based color moments for larger mobile objects and color/texture features at pixel level for smaller mobile objects are used to discriminate the object from background. The proposed neural classifier automatically determines the number of neurons required to estimate the posterior probability map. In the online learning neural classifier, only one neuron parameter is updated per tracker to reduce the computational burden during online adaptation. The tracked object is represented using an estimated posterior probability map. The posterior probability map is used to adapt the bounding box to handle the scale change and improper initialization.For illustrating the advantage of the proposed OLNT under rapid illumination variation, change in appearance, scale/size change, and occlusion, we present results from benchmark video sequences. Finally, we also present the comparison with well-known trackers in the literature and highlight the advantage of the proposed tracker.
机译:对象跟踪是计算机视觉的基本问题,是许多高级任务(例如活动识别,行为分析和监视)所必需的。对象跟踪问题的主要挑战是对象/背景外观,照明,形状和遮挡的动态变化。我们提出了一种在线学习神经跟踪器(OLNT),以区分对象与背景,并适应对象/背景动态的变化。对于目标建模和目标跟踪,提出了一种基于风险敏感损失函数的神经算法,用于处理与样本不平衡和目标动力学有关的问题。基于区域的特征(例如,针对较大的移动对象的基于区域的颜色矩和针对较小的移动对象的像素级别的颜色/纹理特征)可用于将对象与背景区分开。提出的神经分类器自动确定估计后验概率图所需的神经元数量。在在线学习神经分类器中,每个跟踪器仅更新一个神经元参数,以减少在线适应过程中的计算负担。使用估计的后验概率图表示跟踪的对象。后验概率图用于适应边界框以处理比例变化和不正确的初始化。为了说明所提出的OLNT在快速照明变化,外观变化,比例/尺寸变化和遮挡下的优势,我们提供了基准测试结果视频序列。最后,我们还介绍了与文献中的知名跟踪器的比较,并突出了提出的跟踪器的优势。

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