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HE-SLAM: A Stereo SLAM System Based on Histogram Equalization and ORB Features

机译:HE-SLAM:基于直方图均衡化和ORB特征的立体SLAM系统

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摘要

In the real-life environments, due to the sudden appearance of windows, lights, and objects blocking the light source, the visual SLAM system can easily capture the low-contrast images caused by over-exposure or over-darkness. At this time, the direct method of estimating camera motion based on pixel luminance information is infeasible, and it is often difficult to find enough valid feature points without image processing. This paper proposed HE-SLAM, a new method combining histogram equalization and ORB feature extraction, which can be robust in more scenes, especially in stages with low-contrast images. Because HE-SLAM uses histogram equalization to improve the contrast of images, it can extract enough valid feature points in low-contrast images for subsequent feature matching, keyframe selection, bundle adjustment, and loop closure detection. The proposed HE-SLAM has been tested on the popular datasets (such as KITTI and EuRoc), and the real-time performance and robustness of the system are demonstrated by comparing system runtime and the mean square root error (RMSE)of absolute trajectory error (ATE)with state-of-the-art methods like ORB-SLAM2.
机译:在现实环境中,由于窗户,灯光和物体突然遮挡光源,视觉SLAM系统可以轻松捕获由于过度曝光或黑暗而引起的低对比度图像。此时,基于像素亮度信息来估计相机运动的直接方法是不可行的,并且经常难于在没有图像处理的情况下找到足够的有效特征点。本文提出了一种将直方图均衡化和ORB特征提取相结合的新方法HE-SLAM,该方法在更多场景中,特别是在低对比度图像的阶段,具有较强的鲁棒性。因为HE-SLAM使用直方图均衡来改善图像的对比度,所以它可以在低对比度图像中提取足够的有效特征点,以进行后续特征匹配,关键帧选择,束调整和闭环检测。拟议的HE-SLAM已在流行的数据集(例如KITTI和EuRoc)上进行了测试,并且通过比较系统运行时间和绝对轨迹误差的均方根误差(RMSE)证明了系统的实时性能和鲁棒性(ATE)使用最先进的方法,例如ORB-SLAM2。

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