Invention Application
- Patent Title: Neural Network-Based Visual Detection And Tracking Method Of Inspection Robot
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Application No.: US17349170Application Date: 2021-06-16
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Publication No.: US20220180090A1Publication Date: 2022-06-09
- Inventor: Yongduan Song , Li Huang , Shilei Tan , Junfeng Lai , Huan Liu , Ziqiang Jiang , Jie Zhang , Huan Chen , Jiangyu Wu , Hong Long , Fang Hu , Qin Hu
- Applicant: Chongqing University
- Applicant Address: CN Chongqing
- Assignee: Chongqing University
- Current Assignee: Chongqing University
- Current Assignee Address: CN Chongqing
- Priority: CN202011409502.1 20201204
- Main IPC: G06K9/00
- IPC: G06K9/00 ; H04N5/232 ; G06T7/246 ; G06K9/62 ; G06T7/50 ; G06T7/73 ; G06K9/46 ; B25J9/16

Abstract:
The present disclosure provides a neural network-based visual detection and tracking method of an inspection robot, which includes the following steps of: 1) acquiring environmental images of a dynamic background a movement process of the robot; 2) preprocessing the acquired images; 3) detecting human targets and specific behaviors in the images in the robot body, and saving the sizes, position information and features of the human targets with the specific behaviors; 4) controlling the orientation of a robot gimbal by using a target tracking algorithm to make sure that a specific target is always located at the central positions of the images; and 5) controlling the robot to move along with a tracked object. The neural network-based visual detection and tracking method of an inspection robot in the present disclosure has a quite high adaptive ability, achieves better detection and tracking effects on targets in a dynamic background scene.
Public/Granted literature
- US11462053B2 Neural network-based visual detection and tracking method of inspection robot Public/Granted day:2022-10-04
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