detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2409.14985

Tema
Computer Science - Computer Vision... Computer Science - Artificial Inte...
Autor
Lee, Minseung Moon, Seokha Lee, Seung Joon Kim, Jinkyu
Categoría

Computer Science

Año

2024

fecha de cotización

2/10/2024

Palabras clave
detection features detecting computer information generation semantic data objects
Métrico

Resumen

Accurately detecting objects at long distances remains a critical challenge in 3D object detection when relying solely on LiDAR sensors due to the inherent limitations of data sparsity.

To address this issue, we propose the LiDAR-Camera Augmentation Network (LCANet), a novel framework that reconstructs LiDAR point cloud data by fusing 2D image features, which contain rich semantic information, generating additional points to improve detection accuracy.

LCANet fuses data from LiDAR sensors and cameras by projecting image features into the 3D space, integrating semantic information into the point cloud data.

This fused data is then encoded to produce 3D features that contain both semantic and spatial information, which are further refined to reconstruct final points before bounding box prediction.

This fusion effectively compensates for LiDAR's weakness in detecting objects at long distances, which are often represented by sparse points.

Additionally, due to the sparsity of many objects in the original dataset, which makes effective supervision for point generation challenging, we employ a point cloud completion network to create a complete point cloud dataset that supervises the generation of dense point clouds in our network.

Extensive experiments on the KITTI and Waymo datasets demonstrate that LCANet significantly outperforms existing models, particularly in detecting sparse and distant objects.

;Comment: 7 pages

Lee, Minseung,Moon, Seokha,Lee, Seung Joon,Kim, Jinkyu, 2024, Sparse-to-Dense LiDAR Point Generation by LiDAR-Camera Fusion for 3D Object Detection

Documento

Abrir

Compartir

Fuente

Artículos recomendados por ES/IODE IA

Bone metastasis prediction in non-small-cell lung cancer: primary CT-based radiomics signature and clinical feature
non-small-cell lung cancer bone metastasis radiomics risk factor predict cohort model cect cancer prediction 0 metastasis radiomics clinical