4.6 Article

A Novel Multi-Sensor Fusion Based Object Detection and Recognition Algorithm for Intelligent Assisted Driving

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 81564-81574

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3083503

Keywords

Radar; Radar imaging; Radar detection; Object detection; Millimeter wave radar; Cameras; Data integration; Intelligent assisted driving; object detection and recognition; multi-sensor fusion; millimeter-wave radar; high-definition video

Funding

  1. Science and Technology Commission of Shanghai Municipality, Research on Key Technologies of Interpretable Intergeneration of Large-scale Intermodal Sequence Data [20511100800]
  2. Science and Technology Commission of Shanghai Municipality, Research on Intelligent Driving Algorithm Governance in Parks and Expressways [20511101704]

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The study proposed a decision-level fusion method of millimeter-wave radar and high-definition video data based on angular alignment, achieving alignment of radar and camera through joint calibration and approximate interpolation, detecting objects through a deep neural network model, and completing the object detection and recognition task based on fusion of the two data types.
The object detection and recognition algorithm based on the fusion of millimeter-wave radar and high-definition video data can improve the safety of intelligent-driving vehicles effectively. However, due to the different data modalities of millimeter-wave radar and video, how to fuse the two effectively is the key point. The difficulty lies in the data fusion methods such as insufficient adaptability of image distortion in data alignment and coordinate transformation and also the mismatching of information levels of the data to be fused. To solve the problem of data fusion of millimeter wave radar and video, this paper proposes a decision-level fusion method of millimeter-wave radar and high-definition video data based on angular alignment. Specifically, through the joint calibration and approximate interpolation, projected to polar coordinate system, the radar and the camera are angularly aligned in the horizontal direction. Then objects are detected by a deep neural network model from video data, and combined with those detected by radar to make the joint decision. Finally, object detection and recognition task based on the fusion of the two kinds of data is completed. Theoretical analysis and experimental results indicate that the accuracy of the algorithm based on the two data fusion is superior to that of the single detection and recognition algorithm on the basis of millimeter-wave radar or video data.

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