Emotion Detection from Photos Using MobleNet-based Deep Learning

Elizabeth Sunny, Therese Yamuna Mahesh
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Abstract

In the era of twenty-first century, an era characterized by the proliferation of digital technology, big data and so on, the ability to identify human emotions through visual content from images has gained much importance and its popularity is increasing worldwide. This project deals with the task of detecting emotions from images using deep learning techniques with a specific emphasis on Mobile Net-based architectures. We start the project by preparing the dataset of various images showing diverse emotions. The Mobile Net architecture, a powerful convolutional neural network is fine-tuned with a custom dense layer to classify emotions into seven distinct categories. Data argumentation techniques such as zooming, shearing and horizontal flipping are incorporated to enhance robustness and prevent overfitting. The training dataset is preprocessed and normalized while a segregated validation dataset ensures stringent evaluation. During training we implemented early stopping and model checkpoint mechanisms to get optimal performance while avoiding overfitting. After training the analysis of accuracy and loss metrics provides an insight into the model’s trajectory. In practical applicability we use the trained model to predict emotion from single images, showcasing its potential in various domains, including digital marketing, healthcare, and user experience design. In today’s digital landscape the project findings hold relevance for a wide spectrum of applications, promising advancements in human computer interactions and emotion aware systems.
利用基于移动网络的深度学习从照片中进行情感检测
二十一世纪是一个以数字技术和大数据激增为特征的时代,在这个时代,通过图像中的视觉内容识别人类情感的能力变得越来越重要,其普及程度也在全球范围内与日俱增。本项目涉及使用深度学习技术从图像中检测情感的任务,特别强调基于移动网络的架构。项目伊始,我们首先准备了一个包含各种情绪图像的数据集。移动网络架构是一个功能强大的卷积神经网络,通过自定义密集层进行微调,可将情绪分为七个不同的类别。数据论证技术(如缩放、剪切和水平翻转)被纳入其中,以增强鲁棒性并防止过度拟合。训练数据集经过预处理和归一化处理,而隔离验证数据集则确保了严格的评估。在训练过程中,我们采用了提前停止和模型检查点机制,以获得最佳性能,同时避免过度拟合。训练结束后,通过分析准确率和损失指标,我们可以了解模型的运行轨迹。在实际应用中,我们使用训练有素的模型来预测单张图像中的情绪,展示了其在数字营销、医疗保健和用户体验设计等多个领域的潜力。在当今的数字领域,该项目的研究成果具有广泛的应用前景,有望推动人机交互和情感感知系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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