Comparative Study of Deep Learning Based Features in SLAM

Chengqi Deng, Kaitao Qiu, R. Xiong, Chunlin Zhou
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引用次数: 10

Abstract

With the development of deep learning technology, plenty of learning-based feature detectors and descriptors methods are proposed. They achieve great performance on some specific datasets or environments. However, there are few experiments evaluating the performance of these learning-based features detectors and descriptors on a SLAM system. In this paper, we evaluate several learning-based feature detectors and descriptors on KITTI dataset with a SLAM system, using the accuracy of tracking as a metric of these methods. The results show that these learning-based feature detection methods perform poor on KITTI outdoor dataset.
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基于深度学习的SLAM特征比较研究
随着深度学习技术的发展,人们提出了许多基于学习的特征检测器和描述子方法。它们在一些特定的数据集或环境上实现了很好的性能。然而,很少有实验评估这些基于学习的特征检测器和描述符在SLAM系统上的性能。在本文中,我们使用SLAM系统评估了几种基于学习的KITTI数据集特征检测器和描述符,并使用跟踪精度作为这些方法的度量。结果表明,这些基于学习的特征检测方法在KITTI户外数据集上表现不佳。
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