2020 IEEE International Conference on Robotics and Automation, ICRA 2020, Paris, Fransa, 31 Mayıs - 31 Ağustos 2020, ss.11133-11139, (Tam Metin Bildiri)
Research on visual odometry and localisation is largely dominated by solutions developed in the visible spectrum, where illumination is a critical factor. Other parts of the electromagnetic spectrum are currently being investigated to generate solutions dealing with extreme illumination conditions. Multispectral setups are particularly interesting as they provide information from different parts of the spectrum at once. However, the main challenge of such camera setups is the lack of similarity between the images produced, which makes conventional stereo matching techniques obsolete.This work investigates a new way of concurrently processing images from different spectra for application to visual odometry. It particularly focuses on the visible and Long Wave InfraRed (LWIR) spectral bands where dissimilarity between pixel intensities is maximal. A new Multimodal Monocular Visual Odometry solution (MMS-VO) is presented. With this novel approach, features are tracked simultaneously, but only the camera providing the best tracking quality is used to estimate motion. Visual odometry is performed within a windowed bundle adjustment framework, by alternating between the cameras as the nature of the scene changes. Furthermore, the motion estimation process is robustified by selecting adequate keyframes based on parallax.The algorithm was tested on a series of visible-thermal datasets, acquired from a car with real driving conditions. It is shown that feature tracking could be performed in both modalities with the same set of parameters. Additionally, the MMS-VO provides a superior visual odometry trajectory as one camera can compensate when the other is not working.