首页> 外文会议>International Conference on Engineering Technology >Speech emotion recognition using Deep Dropout Autoencoders
【24h】

Speech emotion recognition using Deep Dropout Autoencoders

机译:使用深辍学自身额外的语音情感识别

获取原文

摘要

This work describes speech emotion recognition in Konkani with Deep Dropout Autoencoder using Multilayer Perceptron trained through backpropagation algorithm (DDA). To learn robust representation and to reduce the chance of co-adaption, hidden units along with their connections are randomly dropped out in Dropout Autoencoders while input layer remain untouched at training time. Dropout Autoencoders are pre-trained to bring the initial weights of the network to some good solution and thereafter can be stacked to form a DDA that then converted to a Deep Classifier by adding a classification layer. A final fine-tune training was applied to the whole classifier. Several configurations have been tested to find a good classifier to predict seven emotion states. To validate the experiment DDA has been compared with other state-of-art systems like Deep Autoencoder using Multilayer Perceptron trained through backpropagation algorithm (DA), Hidden Markov Model (HMM) to evaluate the improvement. It has been found that the overall recognition accuracy of DDA gives better performance than DA and HMM which are 82%, 80% and DDA gives a performance 87% that have been studied by using four fold leave-one-out cross validation.
机译:这项工作描述了使用BreakPropagation算法(DDA)训练的多层丢失的软辍学AutoEncoder的konkani中的语音情感识别。为了学习强大的表示,并减少共同适应的机会,隐藏的单位以及它们的连接随机丢弃在辍学AutoEncoders中随机丢弃,而输入层在训练时间保持不变。预先训练丢失AutoEncoders以将网络的初始权重带到一些好的解决方案,此后可以堆叠以形成DDA,然后通过添加分类层将其转换为深度分级器。最终的微调训练应用于整个分类器。已经测试了几种配置以查找良好的分类器以预测七种情绪状态。为了验证实验,DDA已经与Deep AutoEncoder等其他最先进的系统相比,使用通过BackProjagation算法(DA),隐藏的Markov模型(HMM)培训,以评估改进。已经发现,DDA的总体识别准确性比DA和HMM为82%,80%和DDA的均具有更好的性能,这是通过使用四倍的休假交叉验证研究的87%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号