苏科华

Supervisor of Doctorate Candidates  
Supervisor of Master's Candidates

E-Mail:

Date of Employment:2008-11-02

School/Department:计算机学院

Education Level:研究生毕业

Business Address:D203

Gender:Male

Contact Information:13517299596

Status:Employed

Discipline:Computer Applications Technology
Communications and Information Systems
Other specialties in Software Engineering
Cyberspace Security


Paper Publications

Learning behaviour recognition based on multi-object image in single viewpoint

Hits:

DOI number:10.1007/s00779-019-01286-1

Affiliation of Author(s):Springer Science and Business Media Deutschland GmbH

Journal:Personal and Ubiquitous Computing

Abstract:Though greatly significant for education evaluation and improvement the analysis of learning behaviour of students is, recognition of behaviour of students in the classroom surveillance based on one single image remains a challenging work due to problems including heavy occlusion, low resolution, small target size, large variability of camera viewpoints and significant perspective effect. In this paper, an innovative multiple-model method for recognizing students’ learning behaviour and counting the number of students in classroom scenes via detecting individuals’ head, which divides students’ learning behaviour into three categories according to the head posture, is proposed. Through viewing heads at different postures as targets of different categories, behaviour recognition problem is transformed into multi-target detection problem. As the density of students in different images varies dramatically, a multiple model consisting of three detection networks with different sized receptive fields and one switch net is applied that each detection network selects a large number of sub-windows with small stride size from input images to optimize the performance of the model in classroom scenes while the switch net is trained to predict the density of students in the input image and relays the classroom image to the corresponding detection network according to the students’ density prediction. This method is obtained to outperform other methods in terms of accuracy and speed in comparison with state-of-the-art methods on a real classroom surveillance dataset.

Co-author:Zhou Chengcheng,Chen Xu

First Author:Su Kehua

Indexed by:Journal paper

Correspondence Author:Li Xiang

Document Type:J

Volume:25

Issue:6

Page Number:1081-1090

ISSN No.:1617-4909

Translation or Not:no

Date of Publication:2021-12-01

Included Journals:EI

Profile

苏科华,男,武汉大学计算机学院教授、博导;武汉大学科技成果转化中心(技术转移中心)副主任。研究主要集中在最优传输(Optimal Transport)领域,它是研究概率测度间最优变换的一类优化问题。在计算机图形学、机器视觉、人工智能、医学图像处理等领域有着广泛的应用。本人主要研究最优传输的几何计算理论和高效算法,并将其应用于网格保测参数化、三维场景优化、智能烧伤评估和卫星互联网任务优化中。主持包括国家自然科学基金、中央军科委、航天5院、华为公司等20多个项目支持,发表论文50余篇,获批发明专利10余项。为CCF计算机辅助设计与图形学(CAD/CG)和虚拟现实与可视化(TCVRV)专委会执行委员。