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Communication Dans Un Congrès Année : 2022

Online Segmentation of LiDAR Sequences: Dataset and Algorithm

Résumé

Roof-mounted spinning LiDAR sensors are widely used by autonomous vehicles. However, most semantic datasets and algorithms used for LiDAR sequence segmentation operate on $360^\circ$ frames, causing an acquisition latency incompatible with real-time applications. To address this issue, we first introduce HelixNet, a $10$ billion point dataset with fine-grained labels, timestamps, and sensor rotation information necessary to accurately assess the real-time readiness of segmentation algorithms. Second, we propose Helix4D, a compact and efficient spatio-temporal transformer architecture specifically designed for rotating LiDAR sequences. Helix4D operates on acquisition slices corresponding to a fraction of a full sensor rotation, significantly reducing the total latency. Helix4D reaches accuracy on par with the best segmentation algorithms on HelixNet and SemanticKITTI with a reduction of over $5\times$ in terms of latency and $50\times$ in model size. The code and data are available at: https://romainloiseau.fr/helixnet

Dates et versions

hal-03794797 , version 1 (03-10-2022)

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Romain Loiseau, Mathieu Aubry, Loic Landrieu. Online Segmentation of LiDAR Sequences: Dataset and Algorithm. European Conference on Computer Vision 2022, Oct 2022, Tel-Aviv, Israel. ⟨hal-03794797⟩
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