Fast Road Detection Methods on a Large Scale Dataset for Assisting Robot Navigation Using Kernel Principal Component Analysis and Deep Learning

K. Khalilullah, M. Jindai, Shunsuke Ota, T. Yasuda
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引用次数: 2

Abstract

A large database needs a heavy computation when the analysis is needed. The heavy computation leads to decrease the autonomous system performance. In our previous work, a complete vision based dirvable road detection method was proposed using Deep Belief Neural Network(DBNN). However, the previous method is unable to perform in real time for a large scale database. Due to solve this problem, in this paper, two fast drivable road detection approaches have been proposed using Kernel Principal Component Analysis-Deep Belief Neural Network (KPCA-DBNN) and Dimensionality Reduction Deep Belief Neural Network (DRDBNN) to reduce heavy computation for a large database. In the KPCA-DBNN, KPCA is used for dimensionality reduction and DBNN is used for classification. In the DRDBNN, two DBNNs are used. One DBNN is used for dimensionality reduction, and other DBNN is used for classification. The performance of the two approaches is demonstrated by the experimental results. From the experimental results, we see that the KPCA-DBNN and DRDBNN approaches reduce the processing time as compared to the conventional DBNN method. In addition, the results indicate that DRDBNN performed better than KPCA-DBNN in terms of detection accuracy on a large road database.
基于核主成分分析和深度学习的大规模数据集快速道路检测方法
当需要进行分析时,大型数据库需要大量的计算。计算量大导致自治系统性能下降。在之前的工作中,我们提出了一种基于深度信念神经网络(DBNN)的完整视觉可驾驶道路检测方法。但是,对于大规模的数据库,以前的方法无法实时执行。针对这一问题,本文提出了核主成分分析-深度信念神经网络(KPCA-DBNN)和降维深度信念神经网络(DRDBNN)两种快速可行驶道路检测方法,以减少大型数据库的大量计算。在KPCA-DBNN中,KPCA用于降维,DBNN用于分类。在DRDBNN中,使用两个dbnn。一个DBNN用于降维,另一个DBNN用于分类。实验结果验证了这两种方法的有效性。实验结果表明,与传统的DBNN方法相比,KPCA-DBNN和DRDBNN方法减少了处理时间。此外,在大型道路数据库上,DRDBNN的检测精度优于KPCA-DBNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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