基于深度学习的自闭症儿童崩溃识别

Venkata Sindhoor Preetham Patnam, F. George, K. George, Abhishek Verma
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引用次数: 12

摘要

患有自闭症的孩子经常会经历突然的崩溃,这不仅让照顾者/父母感到艰难,而且还会让孩子们伤害自己的身体。研究发现,患有自闭症谱系障碍的儿童表现出某些行为,通过这些行为,我们可以预测他们会有破坏性的崩溃。我们项目的目标是建立一个能够使用深度学习技术识别此类行为的系统,从而通知看护人/父母,以便他们能够在更短的时间内控制住情况。使用深度学习rcnn,我们可以更快更可靠地训练系统,因为与所有机器学习算法不同,深度学习算法更高效,未来的应用范围更广。我们已经训练了一个分类器,这些分类器是从视频和可靠的互联网资源中收集的图像,具有最预测性的手势,通过它我们可以更准确地检测到熔解。我们已经训练了一个模型,该模型的准确率达到了93%,并且伴随着损失/训练分类器,损失最小为0.4%。通过向深度神经网络输入5个人选择的动作进行功能测试,在所有情况下准确率达到92%,保证了系统的实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Recognition of Meltdown in Autistic Kids
Children with autism often experience sudden meltdowns which not only makes the moment tough for the caretakers/parents but also make the children hurt themselves physically. Studies have discovered that children with autistic spectrum disorder exhibit certain actions through which we can anticipate mutilating meltdowns in them. The objective of our project is to build a system that can recognize such kind of actions using deep learning techniques thereby, notifying the caretakers/parents so that they can get the situation under control in lesser time. Using deep learning RCNNs, we can train the system faster yet reliable because unlike all the machine learning algorithms, deep learning algorithms are more efficient and have more scope into future. We have trained a classifier on images that are gathered from videos and reliable internet sources with most predictive gestures, through which we can detect the meltdowns more precisely. We have trained a model that validated the accuracy by ~93% which is accompanied by a loss/train classifier with a minimal 0.4% loss. Functional testing was done through feeding the deep neural network with chosen actions performed by five individuals that resulted in an accuracy of ~92% in all cases, which can assure the real-time usage of the system.
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