Smart City Gnosys

Smart city article details

Title 3D-Msfc: A 3D Multi-Scale Features Compression Method For Object Detection
ID_Doc 198
Authors Li Z.; Tian C.; Yuan H.; Lu X.; Malekmohamadi H.
Year 2024
Published Displays, 85
DOI http://dx.doi.org/10.1016/j.displa.2024.102880
Abstract As machine vision tasks rapidly evolve, a new concept of compression, namely video coding for machines (VCM), has emerged. However, current VCM methods are only suitable for 2D machine vision tasks. With the popularization of autonomous driving, the demand for 3D machine vision tasks has significantly increased, leading to an explosive growth in LiDAR data that requires efficient transmission. To address this need, we propose a machine vision-based point cloud coding paradigm inspired by VCM. Specifically, we introduce a 3D multi-scale features compression (3D-MSFC) method, tailored for 3D object detection. Experimental results demonstrate that 3D-MSFC achieves less than a 3% degradation in object detection accuracy at a compression ratio of 2796×. Furthermore, its low-profile variant, 3D-MSFC-L, achieves less than a 2% degradation in accuracy at a compression ratio of 463×. The above results indicate that our proposed method can provide an ultra-high compression ratio while ensuring no significant drop in accuracy, greatly reducing the amount of data required for transmission during each detection. This can significantly lower bandwidth consumption and save substantial costs in application scenarios such as smart cities. © 2024 Elsevier B.V.
Author Keywords 3D multi-scale features compression; 3D object detection; Machine vision-based point cloud coding


Similar Articles


Id Similarity Authors Title Published
35171 View0.857Abbasi R.; Bashir A.K.; Alyamani H.J.; Amin F.; Doh J.; Chen J.Lidar Point Cloud Compression, Processing And Learning For Autonomous DrivingIEEE Transactions on Intelligent Transportation Systems, 24, 1 (2023)
15354 View0.857Kim D.-H.; Yoon Y.-U.; Han G.-W.; Oh B.T.; Kim J.-G.Compression Of Multiscale Features Of Fpn With Channel-Wise Reduction For VcmElectronics (Switzerland), 12, 13 (2023)