Litcius/Paper detail

LodoNet

Ce Zheng, Yecheng Lyu, Ming Li, Ziming Zhang

202040 citationsDOIOpen Access PDF

Abstract

Deep learning based LiDAR odometry (LO) estimation attracts increasing research interests in the field of autonomous driving and robotics. Existing works feed consecutive LiDAR frames into neural networks as point clouds and match pairs in the learned feature space. In contrast, motivated by the success of image based feature extractors, we propose to transfer the LiDAR frames to image space and reformulate the problem as image feature extraction. With the help of scale-invariant feature transform (SIFT) for feature extraction, we are able to generate matched keypoint pairs (MKPs) that can be precisely returned to the 3D space. A convolutional neural network pipeline is designed for LiDAR odometry estimation by extracted MKPs. The proposed scheme, namely LodoNet, is then evaluated in the KITTI odometry estimation benchmark, achieving on par with or even better results than the state-of-the-art.

Topics & Concepts

Artificial intelligenceOdometryFeature (linguistics)Computer visionConvolutional neural networkVisual odometryComputer scienceLidarPoint cloudPipeline (software)Pattern recognition (psychology)Feature extractionPoint (geometry)PoseArtificial neural networkImage (mathematics)Transfer of learningFeature detection (computer vision)Feature vectorObject detectionField (mathematics)Remote sensingImage processingRobotics and Sensor-Based LocalizationAdvanced Neural Network ApplicationsAdvanced Vision and Imaging