IEEE Open Journal of the Industrial Electronics Society (Jan 2024)

Improved YOLOX-DeepSORT for Multitarget Detection and Tracking of Automated Port RTG

  • ZHENGTAO YU,
  • XUEQIN ZHENG,
  • JUN YANG,
  • JINYA SU

DOI
https://doi.org/10.1109/OJIES.2024.3388632
Journal volume & issue
Vol. 5
pp. 317 – 325

Abstract

Read online

Rubber tire gantry (RTG) plays a pivotal role in facilitating efficient container handling within port operations. Conventional RTG, highly depending on human operations, is inefficient, labor-intensive, and also poses safety issues in adverse environments. This article introduces a multitarget detection and tracking (MTDT) algorithm specifically tailored for automated port RTG operations. The approach seamlessly integrates enhanced YOLOX for object detection and improved DeepSORT for object tracking to enhance the MTDT performance in the complex port settings. In particular, Light-YOLOX, an upgraded version of YOLOX incorporating separable convolution and attention mechanism, is introduced to improve real-time capability and small target detection. Subsequently, OSNet-DeepSORT, an enhanced version of DeepSORT, is proposed to mitigate ID switching challenges arising from unreliable data communication or occlusion in real port scenarios. The effectiveness of the proposed method is validated in various real-life port operations. Ablation studies and comparative experiments against typical MTDT algorithms demonstrate noteworthy enhancements in key performance metrics, encompassing small target detection, tracking accuracy, ID switching frequency, and real-time performance.

Keywords