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A novel approach of multi-stage tracking for precise localization of target in video sequences

机译:一种用于视频序列中目标精确定位的多阶段跟踪新方法

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摘要

Visual tracking methods are mostly based on single stage state estimation that limitedly caters to precise localization of target under dynamic environment such as occlusion, object deformation, rotation, scaling and cluttered background. In order to address these issues, we introduce a novel multi-stage coarse-to fine tracking framework with quick adaptation to environment dynamics. The key idea of our work is to propose two-stage estimation of object state and to develop an adaptive fusion model. Coarse estimation of object state is achieved using optical flow and multiple fragments are generated around this approximation. Precise localization of object is obtained through evaluation of these fragments using three complementary cues. Adaptation of proposed tracker to dynamic environment changes is quick due to incorporation of context sensitive cue reliability, which encompass its direct application for development of expert system for video surveillance. In addition, proposed framework caters to object rotation and scaling through a random walk state model and rotation invariant features. The proposed tracker is evaluated over eight-benchmarked color video sequences and competitive results are obtained. As an average of the outcomes, we achieved mean center location error (in pixels) of 6.791 and F-measure of 0.78. Results demonstrate that proposed tracker not only outperforms various state-of-the-art trackers but also effectively caters to various dynamic environments. (C) 2017 Elsevier Ltd. All rights reserved.
机译:视觉跟踪方法主要基于单阶段状态估计,该阶段有限地满足了在动态环境(例如遮挡,物体变形,旋转,缩放和背景混乱)下目标的精确定位。为了解决这些问题,我们介绍了一种新颖的多阶段粗到精跟踪框架,可以快速适应环境动态。我们工作的关键思想是提出两阶段的对象状态估计并开发自适应融合模型。物体状态的粗略估计是使用光流实现的,并且在此近似值附近会生成多个片段。通过使用三个互补线索对这些片段进行评估,可以获得对象的精确定位。由于结合了上下文相关的提示可靠性,因此建议的跟踪器可以快速适应动态环境变化,这包括将其直接应用于视频监控专家系统的开发。另外,提出的框架通过随机行走状态模型和旋转不变特征来迎合对象的旋转和缩放。拟议的跟踪器在八基准彩色视频序列上进行了评估,并获得了竞争性结果。作为结果的平均值,我们获得了6.791的平均中心位置误差(以像素为单位)和0.78的F-measure。结果表明,提出的跟踪器不仅性能优于各种最新的跟踪器,而且还可以有效满足各种动态环境。 (C)2017 Elsevier Ltd.保留所有权利。

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