Attention-Guided Lidar Segmentation and Odometry Using Image-to-Point Cloud Saliency Transfer
Guanqun Ding, Nevrez Imamoglu, Ali Caglayan, Masahiro, Murakawa, Ryosuke Nakamura

TL;DR
This paper introduces a novel saliency-guided framework that transfers image saliency knowledge to point clouds, significantly enhancing LiDAR segmentation and odometry accuracy for autonomous driving.
Contribution
It presents a universal saliency transfer method from images to point clouds and develops SalLiDAR and SalLONet models for improved segmentation and odometry.
Findings
Achieves state-of-the-art results on benchmark datasets.
Effectively transfers saliency knowledge from images to point clouds.
Improves robustness of LiDAR-based perception tasks.
Abstract
LiDAR odometry estimation and 3D semantic segmentation are crucial for autonomous driving, which has achieved remarkable advances recently. However, these tasks are challenging due to the imbalance of points in different semantic categories for 3D semantic segmentation and the influence of dynamic objects for LiDAR odometry estimation, which increases the importance of using representative/salient landmarks as reference points for robust feature learning. To address these challenges, we propose a saliency-guided approach that leverages attention information to improve the performance of LiDAR odometry estimation and semantic segmentation models. Unlike in the image domain, only a few studies have addressed point cloud saliency information due to the lack of annotated training data. To alleviate this, we first present a universal framework to transfer saliency distribution knowledge from…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Remote Sensing and LiDAR Applications · Advanced Neural Network Applications
