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Optical Flow Object Detection, Motion Estimation, and Tracking onMoving Vehicles using Wavelet Decompositions

机译:使用小波分解的光学流量检测,运动估计和跟踪车辆

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Optical flow-based tracking methods offer the promise of precise, accurate, and reliable analysis of motion, but they suffer from several challenges such as elimination of background movement, estimation of flow velocity, and optimal feature selection. Wavelet approximations can offer similar benefits and retain spatial information at coarser scales, while optical flow estimation increases with the reduction of finer details of moving objects. Optical flow methods often suffer from significant computational overload. In this study, we have investigated the necessary processing steps to increase detection and estimation accuracy, while effectively reducing computation time through the reduction of the image frame size. We have implemented an object tracking algorithm using the optical flow calculated from a phase change between representative coarse wavelet coefficients in subsequent image frames. We have also compared phase-based optical flow with two versions of intensity-based optical flow to determine which method produces superior results under specific operational conditions. The investigation demonstrates the feasibility of using phase-based optical flow with wavelet approximations for object detection and tracking of low resolution aerial vehicles. We also demonstrate that this method can work in tandem with feature-based tracking methods to increase tracking accuracy.
机译:基于光学流动的跟踪方法提供了精确,准确,可靠的运动分析的承诺,但它们遭受了几种挑战,例如消除背景运动,流速估计和最佳特征选择。小波近似可以提供类似的益处并在较粗糙的尺度保持空间信息,而光学流量估计随着移动物体的更细细节的减少而增加。光学流动方法经常遭受显着的计算过载。在本研究中,我们研究了提高检测和估计精度的必要处理步骤,同时通过减少图像帧大小有效地减少计算时间。我们已经实现了一种物体跟踪算法,该对象跟踪算法使用从后续图像帧中的代表粗小波系数之间的相位变化计算的光流。我们还与两种版本的基于强度的光学流进行了比较了基于相位的光流量,以确定哪种方法在特定的操作条件下产生优异的结果。该研究表明使用基于相位的光学流的可行性,所述光波近似用于对象检测和跟踪低分辨率航空车辆。我们还证明,该方法可以在串联中使用基于特征的跟踪方法,以提高跟踪精度。

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