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基于图像边缘的复杂环境改进 FAST 算法。

An Improved FAST Algorithm Based on Image Edges for Complex Environment.

机构信息

School of Mathematics and Statistics, Xidian University, Xi'an 710071, China.

Xi'an Key Laboratory of Network Modeling and Resource Scheduling, Xi'an 710071, China.

出版信息

Sensors (Basel). 2022 Sep 20;22(19):7127. doi: 10.3390/s22197127.

Abstract

In complex environments such as those with low textures or obvious brightness changes, point features extracted from a traditional FAST algorithm cannot perform well in pose estimation. Simultaneously, the number of point features extracted from FAST is too large, which increases the complexity of the build map. To solve these problems, we propose an L-FAST algorithm based on FAST, in order to reduce the number of extracted points and increase their quality. L-FAST pays more attention to the intersection of line elements in the image, which can be extracted directly from the related edge image. Hence, we improved the Canny edge extraction algorithm, including denoising, gradient calculation and adaptive threshold. These improvements aimed to enhance the sharpness of image edges and effectively extract the edges of strong light or dark areas in the images as brightness changed. Experiments on digital standard images showed that our improved Canny algorithm was smoother and more continuous for the edges extracted from images with brightness changes. Experiments on KITTI datasets showed that L-FAST extracted fewer point features and increased the robustness of SLAM.

摘要

在复杂的环境中,例如纹理较低或亮度变化明显的环境中,传统 FAST 算法提取的点特征在姿态估计中表现不佳。同时,FAST 提取的点特征数量过多,增加了构建地图的复杂性。为了解决这些问题,我们提出了一种基于 FAST 的 L-FAST 算法,以减少提取点的数量并提高其质量。L-FAST 更加关注图像中线元素的交点,可以直接从相关的边缘图像中提取。因此,我们改进了 Canny 边缘提取算法,包括去噪、梯度计算和自适应阈值。这些改进旨在增强图像边缘的锐度,并有效地提取图像中亮度变化时强光或暗区的边缘。在数字标准图像上的实验表明,我们改进的 Canny 算法对亮度变化的图像边缘提取更加平滑和连续。在 KITTI 数据集上的实验表明,L-FAST 提取的点特征更少,提高了 SLAM 的鲁棒性。

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