基于深度学习的室内儿童剥削报警系统框架

Shinthi Tasnim Himi, Sarmistha Sarna Gomasta, Natasha Tanzila Monalisa, Md. Ezharul Islam
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引用次数: 0

摘要

儿童暴力是我们社会普遍存在的最令人发指的罪行之一。对儿童的任何形式的虐待或暴力都很重要,不容忽视。它对孩子的心理健康影响如此之深,以至于影响到他以后的生活。因此,必须采取适当措施,使每个儿童免受任何形式的暴力侵害。本文提出了一种改进的基于深度学习的暴力检测框架,该框架将能够在不侵犯任何隐私的情况下实时检测和警告儿童剥削。拟议的框架设计用于室内工作,因此主要可以安装在家庭和教育机构中。该系统的工作原理是:首先利用改进的卷积神经网络(CNN)对监控视频流进行优化。其次,将一组帧序列通过CNN进行特征提取,并转移到长短期记忆(LSTM)中,LSTM将作为分类器。对于概率分布,还引入了softmax层。最后,一个特定的人的年龄和活动将被检测。如果有任何暴力活动,警报将通过系统发送给监护人。我们打算确保我们提出的框架将以一种快速和安全的方式用于自动暴力检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework on Deep Learning-Based Indoor Child Exploitation Alert System
Child violence is one of the most heinous crimes prevailing in our society. Any form of abuse or violence to a child does matter and cannot be overlooked. It affects the mental health of a child so deeply that it influences his later life. So, taking proper measurements for saving every child from any sort of violence is a must. This paper proposes a modified deep learning-based violence detection framework that will be able to detect and alert child exploitation in real-time without any privacy breach. The proposed framework is designed to work indoor, so primarily it can be installed in homes and educational institutions. The mechanism of the system is as such firstly, the surveillance video streams will be optimized using a modified convolutional neural network (CNN). Secondly, a sequence of frames will be passed through CNN for feature extraction and transferred to the long short-term memory (LSTM), which will act as a classifier. A softmax layer also has been introduced for the probabilistic distribution. Finally, the age and activities of a specific person will be detected. If there is any violent activity, an alert will be sent to the guardian through the system. We intend to ensure our proposed framework will be implied for automatic violence detection in a quick and safe approach.
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