/pytorch-LiLaNet

Implementation of "Boosting LiDAR-based Semantic Labeling by Cross-Modal Training Data Generation"

Primary LanguagePythonMIT LicenseMIT

pytorch-LiLa alt text

Inofficial PyTorch implementation of Boosting LiDAR-based Semantic Labeling by Cross-Modal Training Data Generation (Piewak et al., 2018).

Differences:

The Autolabeling process is currently not used, instead the converted KITTI data from SqueezeSeg is used. For better convergence we add batch normalization after each convolutional layer.

Results:

Car Pedestrian Cyclist mIoU
SqueezeSeg 64.6 21.8 25.1 37.2
SqueezeSegV2 73.2 27.8 33.6 44.9
LiLaNet 67.6 36.9 31.9 45.5

Requirements

Usage

Train model:

Important: The dataset-dir must contain the lidar_2d and the ImageSet folder.

python train_kitti.py --dataset-dir 'data/kitti'