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Papers/RELLIS-3D Dataset: Data, Benchmarks and Analysis

RELLIS-3D Dataset: Data, Benchmarks and Analysis

Peng Jiang, Philip Osteen, Maggie Wigness, Srikanth Saripalli

2020-11-17Scene UnderstandingSegmentationSemantic SegmentationAutonomous Navigation3D Semantic Segmentation
PaperPDFCodeCodeCode(official)

Abstract

Semantic scene understanding is crucial for robust and safe autonomous navigation, particularly so in off-road environments. Recent deep learning advances for 3D semantic segmentation rely heavily on large sets of training data, however existing autonomy datasets either represent urban environments or lack multimodal off-road data. We fill this gap with RELLIS-3D, a multimodal dataset collected in an off-road environment, which contains annotations for 13,556 LiDAR scans and 6,235 images. The data was collected on the Rellis Campus of Texas A\&M University and presents challenges to existing algorithms related to class imbalance and environmental topography. Additionally, we evaluate the current state-of-the-art deep learning semantic segmentation models on this dataset. Experimental results show that RELLIS-3D presents challenges for algorithms designed for segmentation in urban environments. This novel dataset provides the resources needed by researchers to continue to develop more advanced algorithms and investigate new research directions to enhance autonomous navigation in off-road environments. RELLIS-3D is available at https://github.com/unmannedlab/RELLIS-3D

Results

TaskDatasetMetricValueModel
Semantic SegmentationRELLIS-3D DatasetMean IoU (class)50.13gscnn
Semantic SegmentationRELLIS-3D DatasetMean IoU (class)48.83hrnet+OCR
Semantic SegmentationRELLIS-3D DatasetMean IoU (class)43.07salsanext
Semantic SegmentationRELLIS-3D DatasetMean IoU (class)19.97kpconv
3D Semantic SegmentationRELLIS-3D DatasetMean IoU (class)43.07salsanext
3D Semantic SegmentationRELLIS-3D DatasetMean IoU (class)19.97kpconv
10-shot image generationRELLIS-3D DatasetMean IoU (class)50.13gscnn
10-shot image generationRELLIS-3D DatasetMean IoU (class)48.83hrnet+OCR
10-shot image generationRELLIS-3D DatasetMean IoU (class)43.07salsanext
10-shot image generationRELLIS-3D DatasetMean IoU (class)19.97kpconv

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