Instructor Activity Recognition through Deep Spatiotemporal Features and Feedforward Extreme Learning Machines

Author:

Nida Nudrat1,Yousaf Muhammad Haroon1ORCID,Irtaza Aun2,Velastin Sergio A.345

Affiliation:

1. Department of Computer Engineering, University of Engineering and Technology, Taxila, Pakistan

2. Department of Computer Science, University of Engineering and Technology, Taxila, Pakistan

3. Cortexica Vision Systems Ltd., UK

4. Queen Mary University London, UK

5. University of Carlos III Madrid, Spain

Abstract

Human action recognition has the potential to predict the activities of an instructor within the lecture room. Evaluation of lecture delivery can help teachers analyze shortcomings and plan lectures more effectively. However, manual or peer evaluation is time-consuming, tedious and sometimes it is difficult to remember all the details of the lecture. Therefore, automation of lecture delivery evaluation significantly improves teaching style. In this paper, we propose a feedforward learning model for instructor’s activity recognition in the lecture room. The proposed scheme represents a video sequence in the form of a single frame to capture the motion profile of the instructor by observing the spatiotemporal relation within the video frames. First, we segment the instructor silhouettes from input videos using graph-cut segmentation and generate a motion profile. These motion profiles are centered by obtaining the largest connected components and normalized. Then, these motion profiles are represented in the form of feature maps by a deep convolutional neural network. Then, an extreme learning machine (ELM) classifier is trained over the obtained feature representations to recognize eight different activities of the instructor within the classroom. For the evaluation of the proposed method, we created an instructor activity video (IAVID-1) dataset and compared our method against different state-of-the-art activity recognition methods. Furthermore, two standard datasets, MuHAVI and IXMAS, were also considered for the evaluation of the proposed scheme.

Funder

Universidad Carlos III de Madrid

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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1. STAR-3D: A Holistic Approach for Human Activity Recognition in the Classroom Environment;Information;2024-03-25

2. Instructional Activity Recognition Using A Transformer Network with Multi-Semantic Attention;2024 IEEE Southwest Symposium on Image Analysis and Interpretation (SSIAI);2024-03-17

3. Intelligent Recognition of Teaching Behaviors in Smart Classroom;2024 International Conference on Informatics Education and Computer Technology Applications (IECA);2024-01-26

4. Automated Multimode Teaching Behavior Analysis: A Pipeline-Based Event Segmentation and Description;IEEE Transactions on Learning Technologies;2024

5. Spatial deep feature augmentation technique for FER using genetic algorithm;Neural Computing and Applications;2023-12-14

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