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A Fast Feature Extraction Process for Visual SLAM

机译:Visual SLAM的快速特征提取过程

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摘要

Over the past decades, visual SLAM has successfully applied in robotics and augmented reality. The effectiveness of the feature extraction has an important influence on the performance of the visual SLAM. This paper proposes an Oriented AGAST and Rotated BRIEF (OARB) method to improve the efficiency of visual SLAM to address the specific application, such as mobile platform. We use the AGAST algorithm to detect corner points in parallel and measure the direction of each corner. Then we use the BRIEF algorithm to calculate the descriptor. We compare our proposed OARB method with the ORB method in visual SLAM on two public datasets. Experimental results demonstrate that our proposed OARB method can outperform the ORB method for visual SLAM in terms of speed and meanwhile achieve the competitive performance.
机译:在过去的几十年中,视觉SLAM已成功应用于机器人技术和增强现实。特征提取的有效性对视觉SLAM的性能有重要影响。本文提出了一种面向对象的AGAST和旋转简报(OARB)方法,以提高视觉SLAM的效率,以解决诸如移动平台之类的特定应用。我们使用AGAST算法来并行检测角点并测量每个角的方向。然后我们使用BRIEF算法来计算描述符。在两个公共数据集上,我们在视觉SLAM中将我们提出的OARB方法与ORB方法进行了比较。实验结果表明,本文提出的OARB方法在视觉速度上优于视觉SLAM的ORB方法,同时具有竞争优势。

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