复杂情绪识别ResNet-50对情绪状态解析的深入探索

T.N.V.S Praveen, Dasaradhi Sivathmika, Goparaju Jahnavi, Jaswitha Bolledu
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引用次数: 0

摘要

情感识别是计算机视觉中的一项重要任务,在人机交互、虚拟助手和心理健康监测等领域有着广泛的应用。近年来,深度学习模型在从图像和视频中准确识别情绪方面显示出巨大的前景。本文提出了情绪识别的ResNet-50模型。ResNet-50是一种流行的深度学习架构,已成功应用于图像分类任务,并可用于情绪识别。与现有方法相比,使用ResNet-50进行情绪识别有几个优点。首先,ResNet-50是一个完善的架构,已广泛用于许多计算机视觉任务,这使其成为一个可靠的选择。其次,ResNet-50具有多层的深层架构,允许它从图像中捕获更复杂的模式和特征,这可以带来更好的情感识别性能。最后,ResNet-50在计算资源方面相对高效,这意味着它可以在各种硬件上进行训练和部署,包括智能手机和嵌入式系统等低功耗设备。与现有方法相比,用于情绪识别的ResNet-50具有几个优势,包括可靠性、更好的性能和有效地利用计算资源。这些优点使ResNet-50在广泛的应用中成为情绪识别任务的有希望的候选者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An In-depth Exploration of ResNet-50 for Complex Emotion Recognition to Unraveling Emotional States
Emotional Recognition is an important task in computer vision and has many applications, including humanrobot interaction, virtual assistants, and mental health monitoring. In recent years, deep learning models have shown great promise in accurately recognizing emotions from images and videos. This paper proposes the ResNet-50 model for emotional recognition. ResNet-50 is a popular deep learning architecture that has been successfully applied to image classification tasks, and can be adapted for emotional recognition. Using ResNet-50 for emotional recognition offers several advantages over existing approaches. Firstly, ResNet-50 is a well-established architecture that has been extensively used in many computer vision tasks, which makes it a reliable choice. Secondly, ResNet-50 has a deep architecture with many layers that allows it to capture more complex patterns and features from images, which can lead to better emotion recognition performance. Finally, ResNet-50 is relatively efficient in terms of computational resources, which means it can be trained and deployed on a variety of hardware, including low-power devices such as smartphones and embedded systems. ResNet-50 for emotional recognition has several advantages over existing approaches, including reliability, better performance, and efficient use of computational resources. These advantages make ResNet-50 a promising candidate for emotion recognition tasks in a wide range of applications.
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