机器人视觉定位的鲁棒混合描述符学习

J. Robotics Pub Date : 2022-05-19 DOI:10.1155/2022/9354909
Qingwu Shi, Junjun Wu, Zeqin Lin, Ningwei Qin
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引用次数: 0

摘要

长期鲁棒视觉定位是移动机器人长期视觉导航的主要挑战之一。由于光照、天气、季节等因素的影响,移动机器人在复杂的场景中持续依靠视觉信息进行导航,很可能导致故障在几小时内定位。然而,语义分割图像将比原始图像在相当大的急剧变化的环境中更稳定;因此,为了充分利用语义分割图像及其原始图像的优点,本文利用语义分割的最新成果解决了上述问题,提出了一种新的用于长期视觉定位的混合描述子,该描述子是将从分割图像中提取的语义图像描述子与从RGB图像中提取的具有一定权值的图像描述子相结合,然后通过卷积神经网络进行训练。实验表明,该方法结合了语义图像描述子和图像描述子的优点,其定位性能优于仅使用图像描述子或语义图像描述子的长期视觉定位方法。最后,在扩展CMU季节和RobotCar季节数据集的各种具有挑战性的环境条件下,我们的实验结果在特定的精度指标上大多超过了最先进的基于2D图像的定位方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning a Robust Hybrid Descriptor for Robot Visual Localization
Long-term robust visual localization is one of the main challenges of long-term visual navigation for mobile robots. Due to factors such as illumination, weather, and season, mobile robots continuously navigate with visual information in a complex scene, which is likely to lead to failure localization within a few hours. However, semantic segmentation images will be more stable than the original images against considerable drastically variable environments; therefore, to make full use of the advantages of both semantic segmentation image and its original image, this paper solves the above problems with the latest work of semantic segmentation and proposes the novel hybrid descriptor for long-term visual localization, which is generated by combining a semantic image descriptor extracted from segmentation images and an image descriptor extracted from RGB images with a certain weight, and then trained by a convolutional neural network. Our experiments show that the localization performance of our method combining the advantages of semantic image descriptor and image descriptor is superior to those long-term visual localization methods with only an image descriptor or semantic image descriptor. Finally, our experimental results mostly exceed state-of-the-art 2D image-based localization methods under various challenging environmental conditions in the Extended CMU Seasons and RobotCar Seasons datasets in specific precision metrics.
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