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Transfer learning techniques for emotion classification on visual features of images in the deep learning network

机译:深度学习网络中图像视觉特征的情感分类传输学习技术

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摘要

Emotion is subjective which convey rich semantics based on an image that induces different emotion based on each individual. A novel method is proposed for emotion classification by using deep learning network with transfer learning method. Transfer learning techniques are the predictive model that reuses the model trained on related predictive problems. The purpose of the proposed work is to classify the emotion perception from images based on visual features. Image augmentation and segmentation is performed to build powerful classifier. The performance of deep convolution neural network (CNN) is improved with transfer learning techniques in large scale Image-Emotion-dataset effectively. The experiments conducted on this dataset and result shows that proposed method achieve promising significant effect on emotion classification with good accuracy and PDA value, when compared with other state-of-art methods.
机译:情感是基于诱导基于每个人的图像传达丰富语义的主观性。通过使用传递学习方法的深度学习网络提出了一种新的方法,用于使用深度学习网络。转移学习技术是重用相关预测问题培训的模型的预测模型。拟议工作的目的是根据视觉功能对图像的情感感知进行分类。执行图像增强和分段以构建强大的分类器。深度卷积神经网络(CNN)的性能得到了改进的大规模图像情感 - DataSet的转移学习技术。在该数据集和结果上进行的实验表明,与其他最先进的方法相比,提出的方法对具有良好准确性和PDA值的情感分类来实现对情绪分类的显着影响。

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