Linda
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Paper Publications
An Improved D-CNN Based on YOLOv3 for Pedestrian Detection
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Affiliation of Author(s):电子信息工程学院

Journal:IEEE Int. Conf. Signal Image Process., ICSIP

Abstract:Recent developments in pedestrian detection techniques shows that former algorithms cannot satisfy accurate and speedy detection for practical applications. Adding to the list of modern algorithms in deep learning, these methods are capable to fulfill the requirement of modern applications for pedestrian detection. In this paper, a deep convolutional neural network (D-CNN) based single class You Only Look Once (YOLOv3) state-of-the-art approach is proposed to overcome the problem of pedestrian detection in the contemporary application namely advanced driving assistance system (ADAS), and video surveillance system in terms of false detection (FD) and miss rate (MR). The proposed model is trained on INRIA datasets, which are universally applicable for pedestrian detection. Furthermore, it is effectively demonstrated in different scenarios. © 2019 IEEE.

Translation or Not:no

Date of Publication:2019-07-01

Co-author:Ahmad, Faizan,Tahir, Mustafa

Correspondence Author:Linda

Personal information

Associate Professor

Alma Mater:香港城市大学

Education Level:香港城市大学

Degree:301

School/Department:College of Electronic and Information Engineering

Discipline:Signal and Information Processing. Communications and Information Systems

Business Address:电子信息工程学院办公楼328室

Contact Information:13915768576

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