CVAILGIVNov 26, 2024

HSI-Drive v2.0: More Data for New Challenges in Scene Understanding for Autonomous Driving

arXiv:2411.17530v121 citationsh-index: 16SSCI
Originality Synthesis-oriented
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This work addresses the need for robust, seasonally diverse data for autonomous driving systems, though it is incremental as it builds on a prior dataset version.

The authors tackled the problem of scene understanding for autonomous driving by expanding the HSI-Drive dataset to include images from all four seasons, resulting in improved model performance with 752 annotated images and enhanced segmentation for safety-critical objects like vehicles and pedestrians.

We present the updated version of the HSI-Drive dataset aimed at developing automated driving systems (ADS) using hyperspectral imaging (HSI). The v2.0 version includes new annotated images from videos recorded during winter and fall in real driving scenarios. Added to the spring and summer images included in the previous v1.1 version, the new dataset contains 752 images covering the four seasons. In this paper, we show the improvements achieved over previously published results obtained on the v1.1 dataset, showcasing the enhanced performance of models trained on the new v2.0 dataset. We also show the progress made in comprehensive scene understanding by experimenting with more capable image segmentation models. These models include new segmentation categories aimed at the identification of essential road safety objects such as the presence of vehicles and road signs, as well as highly vulnerable groups like pedestrians and cyclists. In addition, we provide evidence of the performance and robustness of the models when applied to segmenting HSI video sequences captured in various environments and conditions. Finally, for a correct assessment of the results described in this work, the constraints imposed by the processing platforms that can sensibly be deployed in vehicles for ADS must be taken into account. Thus, and although implementation details are out of the scope of this paper, we focus our research on the development of computationally efficient, lightweight ML models that can eventually operate at high throughput rates. The dataset and some examples of segmented videos are available in https://ipaccess.ehu.eus/HSI-Drive/.

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