Existing visual SLAM approaches are sensitive to illumination, with their precision drastically falling in dark conditions due to feature extractor limitations. The algorithms currently used to overcome this issue are not able to provide reliable results due to poor performance and noisiness, and the localization quality in dark conditions is still insufficient for practical use. In this paper, we present a novel SLAM method capable of working in low light using Generative Adversarial Network (GAN) preprocessing module to enhance the light conditions on input images, thus improving the localization robustness. The proposed algorithm was evaluated on a custom indoor dataset consisting of 14 sequences with varying illumination levels and ground truth data collected using a motion capture system. According to the experimental results, the reliability of the proposed approach remains high even in extremely low light conditions, providing 25.1% tracking time on darkest sequences, whereas existing approaches achieve tracking only 0.6% of the sequence time.
翻译:现有的直观SLM方法对照明十分敏感,其精确度因地物采样限制而在黑暗条件下急剧下降,目前用来解决这一问题的算法由于性能差和注意性差而无法提供可靠的结果,而暗条件下的本地化质量仍不足以实际使用。在本文中,我们提出了一个新的SLM方法,它能够利用General Aversarial Network(GAN)预处理模块在低光线下工作,以提高输入图像的光线条件,从而改进本地化的稳健性。提议的算法是在一个由14个序列组成的室内定制数据集上评估的,该数据集包含不同照明水平的14个序列,以及利用运动捕捉系统收集的地面真相数据。根据实验结果,拟议方法的可靠性即使在极低光条件下仍然很高,为最黑暗序列提供了25.1%的跟踪时间,而现有方法只能跟踪0.6%的序列时间。