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    A self-supervised near-to-far approach for terrain-adaptive off-road autonomous driving

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    Date
    2021-07-05
    Author
    Mayuku, Orighomisan
    Surgenor, Brian W.
    Marshall, Joshua A.
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    Abstract
    For use in off-road autonomous driving applications, we propose and study the use of multi-resolution local binary pattern texture descriptors to improve overall semantic segmentation performance and reduce class imbalance effects in off-road visual datasets. Our experiments, using a challenging publicly available off-road dataset as well as our own off-road dataset, show that texture features provide added flexibility towards reducing class imbalance effects, and that fusing color and texture features can improve segmentation performance. Finally, we demonstrate domain adaptation limitations in nominally similar off-road environments by cross-comparing the segmentation performance of convolutional neural networks trained on both datasets.
    URI for this record
    http://hdl.handle.net/1974/28952
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