Motion Estimation Based on an Improved Optical Flow Method Using PIV for VSLAM

Sheng Yang, Lan Cheng, Jiaqi Yin
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Abstract

As an important research topic in the field of robotics, the optical flow method is widely used for motion estimation in visual simultaneous location and mapping (VSLAM). However, the optical flow method is based on the gray-invariant assumption, which restricts its application in the case of drastic luminosity variation. Moreover, the optical flow method can speed up the processing speed in motion estimation, but it cannot work effectively in scenarios with missing features. As a velocity measurement technology in the field of flow field and fluid, the particle image velocimetry (PIV) can overcome the aforementioned disadvantages of the optical flow method, and achieve motion estimation since it considers points in an image uniformly and can achieve sub-pixel accuracy for positional estimation. To this end, an improved optical flow method based on PIV is proposed by adopting the FFT cross-correlation matching algorithm and the sub-pixel displacement matching algorithm to estimate the image pixel displacement in the field of missing features. Experiments on the EUROC data-set show that the proposed method can not only track the motion of more pixels compared with that the multi-layer optical flow method, but also run in higher accuracy in the areas with missing features.
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基于PIV改进光流法的VSLAM运动估计
光流方法作为机器人领域的一个重要研究课题,被广泛应用于视觉同步定位与映射(VSLAM)中的运动估计。然而,光流法基于灰度不变假设,限制了其在亮度剧烈变化情况下的应用。此外,光流方法可以加快运动估计的处理速度,但在缺少特征的情况下不能有效地工作。粒子图像测速(PIV)作为流场和流体领域的一种速度测量技术,克服了光流法的上述缺点,由于均匀地考虑图像中的点,可以实现运动估计,并且可以实现亚像素精度的位置估计。为此,提出了一种改进的基于PIV的光流方法,采用FFT互相关匹配算法和亚像素位移匹配算法来估计缺失特征域的图像像素位移。在EUROC数据集上的实验表明,与多层光流方法相比,该方法不仅可以跟踪更多像素的运动,而且在特征缺失区域的运行精度更高。
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