论文标题
TP-TIO:具有深度热点的强大热惯性辐射仪
TP-TIO: A Robust Thermal-Inertial Odometry with Deep ThermalPoint
论文作者
论文摘要
为了在视觉降低的环境中实现稳健的运动估计,热进量一直是机器人群落中的吸引力。但是,大多数热探测方法纯粹基于经典的特征提取器,由于突然的光度变化和较大的热噪声,很难在连续帧中建立强大的对应关系。为了解决此问题,我们提出了Thermalpoint,这是一个轻巧的功能检测网络,专门针对热图像生产关键点,与其他最先进的方法相比,提供了显着的反噪声改进。之后,我们将热点与一种新型的辐射特征跟踪方法相结合,该方法直接使用完整的辐射数据,并在顺序帧之间建立了可靠的对应关系。最后,利用基于优化的视觉惯性框架,在各种视觉降低的环境中彻底评估了一个基于特征的热惯性进程(TP-TIO)框架。实验表明,我们的方法在充满烟雾的环境中优于最先进的视觉和激光探光法,并且在正常环境中实现了竞争精度。
To achieve robust motion estimation in visually degraded environments, thermal odometry has been an attraction in the robotics community. However, most thermal odometry methods are purely based on classical feature extractors, which is difficult to establish robust correspondences in successive frames due to sudden photometric changes and large thermal noise. To solve this problem, we propose ThermalPoint, a lightweight feature detection network specifically tailored for producing keypoints on thermal images, providing notable anti-noise improvements compared with other state-of-the-art methods. After that, we combine ThermalPoint with a novel radiometric feature tracking method, which directly makes use of full radiometric data and establishes reliable correspondences between sequential frames. Finally, taking advantage of an optimization-based visual-inertial framework, a deep feature-based thermal-inertial odometry (TP-TIO) framework is proposed and evaluated thoroughly in various visually degraded environments. Experiments show that our method outperforms state-of-the-art visual and laser odometry methods in smoke-filled environments and achieves competitive accuracy in normal environments.