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Preliminary communication

https://doi.org/10.31803/tg-20221227094126

A Study on Verification of CCTV Image Data through Unsupervised Learning Model of Deep Learning

Yangsun Lee orcid id orcid.org/0000-0001-8155-116X ; Seokyeong University, 124 Seogyeong-ro Seongbuk-gu, Seoul, 02173, Korea


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Abstract

Abnormal behavior is called an abnormal behavior that deviates from the same normal standard as the average. The installation of public CCTVs to prevent crimes is increasing, but the crime rate is rather increasing recently. In line with this situation, artificial intelligence research using deep learning that automatically finds abnormal behavior in CCTV is increasing. Deep learning is a type of artificial intelligence designed based on artificial neural networks, and the quality of learning data is important for high accuracy in the development of artificial intelligence through deep learning. This paper verifies whether learning data for abnormal behavior detection is suitable as learning data which is being constructed using an MPED-RNN model for binary classification to determine whether there is an abnormal behavior by frame using skeleton data of a person based on an autoencoder. As a result of the experiment, the unsupervised learning-based MPED-RNN model used in this paper is not suitable for verifying images with a similar number of frames with and without abnormal behavior, such as the corresponding data, and it is judged that appropriate results can be derived only when verified with a supervised learning-based model.

Keywords

abnormal behavior; abnormal behavior detection; artificial neural network; deep learning; MPED-RNN; unsupervised learning model

Hrčak ID:

306115

URI

https://hrcak.srce.hr/306115

Publication date:

15.9.2023.

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