An Iterative Learning Scheme with Binary Classifier for Improved Event Detection in Surveillance Video

Author:

Tran Cuong H.1,Kong Seong G.1ORCID

Affiliation:

1. Department of Computer Engineering, Sejong University, Seoul 05006, Republic of Korea

Abstract

This paper presents an iterative training framework with a binary classifier to improve the learning capability of a deep learning model for detecting abnormal behaviors in surveillance video. When a deep learning model trained on data from one surveillance video is deployed to monitor another video stream, its abnormal behavior detection performance often decreases significantly. To ensure the desired performance in new environments, the deep learning model needs to be retrained with additional training data from the new video stream. Iterative training requires manual annotation of the additional training data during the fine-tuning process, which is a tedious and error-prone task. To address this issue, this paper proposes a binary classifier to automatically label false positive data without human intervention. The binary classifier is trained on bounding boxes extracted from the detection model to identify which boxes are true positives or false positives. The proposed learning framework incrementally enhances the performance of the deep learning model for detecting abnormal behaviors in a surveillance video stream through repeated iterative learning cycles. Experimental results demonstrate that the accuracy of the detection model increases from 0.35 (mAP = 0.74) to 0.91 (mAP = 0.99) in just a few iterations.

Funder

Sejong University

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference25 articles.

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3. Jocher, G., Chaurasia, A., Stoken, A., Borovec, J., NanoCode012, Kwon, Y., Michael, K., Fang, J., and imyhxy (2022, September 10). ultralytics/yolov5: v7.0—YOLOv5 SOTA Realtime Instance Segmentation. Available online: https://zenodo.org/record/7347926#.Y9XPmq1BxPY.

4. Fang, M., Chen, Z., Przystupa, K., Li, T., Majka, M., and Kochan, O. (2021). Examination of abnormal behavior detection based on improved YOLOv3. Electronics, 10.

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