6533b82dfe1ef96bd1291400
RESEARCH PRODUCT
A new multimodal RGB and polarimetric image dataset for road scenes analysis
Rachel BlinStéphane CanuSamia AinouzFabrice Meriaudeausubject
Reflection (computer programming)Modality (human–computer interaction)business.industryComputer sciencePolarimetryComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION[INFO] Computer Science [cs]010501 environmental sciencesObject (computer science)01 natural sciences010309 opticsLidar0103 physical sciencesRGB color modelComputer vision[INFO]Computer Science [cs]Artificial intelligencebusinessVisibility0105 earth and related environmental sciencesdescription
International audience; Road scene analysis is a fundamental task for both autonomous vehicles and ADAS systems. Nowadays, one can find autonomous vehicles that are able to properly detect objects present in the scene in good weather conditions but some improvements are left to be done when the visibility is altered. People claim that using some non conventional sensors (infra-red, Lidar, etc.) along with classical vision enhances road scene analysis but still when conditions are optimal. In this work, we present the improvements achieved using polarimetric imaging in the complex situation of adverse weather conditions. This rich modality is known for its ability to describe an object not only by its intensity but also by its physical information, even under poor illumination and strong reflection. The experimental results have shown that, using our new multimodal dataset, polarimetric imaging was able to provide generic features for both good weather conditions and adverse weather ones. By combining polarimetric images with an adapted learning model, the different detection tasks in adverse weather conditions were improved by about 27%.
year | journal | country | edition | language |
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2020-06-14 |