TY - GEN
T1 - An unsupervised optical flow estimation for lidar image sequences
AU - Guo, Xuezhou
AU - Lin, Xuhu
AU - Zhao, Lili
AU - Zhu, Zezhi
AU - Chen, Jianwen
PY - 2021
Y1 - 2021
N2 - ![CDATA[In recent years, the LiDAR images, as a 2D compact representation of 3D LiDAR point clouds, are widely applied in various tasks, e.g., 3D semantic segmentation, LiDAR point cloud compression (PCC). Among these works, the optical flow estimation for LiDAR image sequences has become a key issue, especially for the motion estimation of the inter prediction in PCC. However, the existing optical flow estimation models are likely to be unreliable for LiDAR images. In this work, we first propose a light-weight flow estimation model for LiDAR image sequences. The key novelty of our method lies in two aspects. One is that for the different characteristics (with the spatial-variation feature distribution) of the LiDAR images w.r.t. the normal color images, we introduce the attention mechanism into our model to improve the quality of the estimated flow. The other one is that to tackle the lack of large-scale LiDAR-image annotations, we present an unsupervised method, which directly minimizes the inconsistency between the reference image and the reconstructed image based on the estimated optical flow. Extensive experimental results have shown that our proposed model outperforms other mainstream models on the KITTI dataset, with much fewer parameters.]]
AB - ![CDATA[In recent years, the LiDAR images, as a 2D compact representation of 3D LiDAR point clouds, are widely applied in various tasks, e.g., 3D semantic segmentation, LiDAR point cloud compression (PCC). Among these works, the optical flow estimation for LiDAR image sequences has become a key issue, especially for the motion estimation of the inter prediction in PCC. However, the existing optical flow estimation models are likely to be unreliable for LiDAR images. In this work, we first propose a light-weight flow estimation model for LiDAR image sequences. The key novelty of our method lies in two aspects. One is that for the different characteristics (with the spatial-variation feature distribution) of the LiDAR images w.r.t. the normal color images, we introduce the attention mechanism into our model to improve the quality of the estimated flow. The other one is that to tackle the lack of large-scale LiDAR-image annotations, we present an unsupervised method, which directly minimizes the inconsistency between the reference image and the reconstructed image based on the estimated optical flow. Extensive experimental results have shown that our proposed model outperforms other mainstream models on the KITTI dataset, with much fewer parameters.]]
UR - https://hdl.handle.net/1959.7/uws:67384
U2 - 10.1109/ICIP42928.2021.9506376
DO - 10.1109/ICIP42928.2021.9506376
M3 - Conference Paper
SN - 9781665441155
SP - 2613
EP - 2617
BT - Proceedings of the 2021 IEEE International Conference on Image Processing, 19-22 September 2021, Anchorage, Alaska, USA
PB - IEEE
T2 - IEEE International Conference on Image Processing
Y2 - 19 September 2021
ER -