基于Lucas Kanade光流的车辆运动跟踪与速度估计

G. P, A. P, Gayathri Vinayan, Gokuldath G, Ponmalar M, Aswini S H
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引用次数: 0

摘要

光流是一种强大的图像处理应用,用于各种应用,主要是在目标跟踪和运动估计。本文采用基于Lucas-Kanade (L-K)算法的光流方法实现了一个车辆运动跟踪和速度估计系统。这项工作包括光流的两个应用:在固定摄像头的情况下跟踪车辆的运动和在车上安装了摄像头的车辆的速度估计。预处理步骤包括高斯平滑,计算空间和时间梯度。然后进一步以矩阵的形式表述Lucas kanade方程。然后用最小二乘误差准则求解方程组,得到流矢量。分割,blob分析,相机校准和阈值等过程进一步完成,用于速度估计和运动跟踪。通过从实验室测试场景获得的视频序列和从各种来源获取的真实摄像机视觉效果,对该功能进行了测试和验证。
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Lucas Kanade based Optical Flow for Vehicle Motion Tracking and Velocity Estimation
Optical flow is a powerful application of image processing that is used in a variety of applications, primarily in object tracking and motion estimation. In this paper, we implement a system for vehicle motion tracking and velocity estimation using Lucas-Kanade (L-K) algorithm based optical flow method. The work includes two applications of optical flow: tracking the movement of the vehicle in the case of a fixed camera and velocity estimation of a vehicle with a camera mounted on it. Pre-processing steps include gaussian smoothing, and computing spatial and temporal gradients. This is followed by the further formulation of Lucas kanade equation in the form of matrices. The system of equations is then solved using the least square error criteria, and the flow vectors are obtained. Processes such as segmentation, blob analysis, camera calibration, and thresholding are further done which are used for velocity estimation as well as motion tracking. The functionality was tested and verified on video sequences obtained from the lab testing scenarios and real-world camera visuals taken from various sources.
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