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Context-aware Cascade Attention-based RNN for Video Emotion Recognition

机译:基于上下文感知的级联注意力的RNN用于视频情感识别

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Emotion recognition can provide crucial information about the user in many applications when building human-computer interaction (HCI) systems. Most of current researches on visual emotion recognition are focusing on exploring racial features. However, context information including surrounding environment and human body can also provide extra clues to recognize emotion more accurately. Inspired by “sequence to sequence model” for neural machine translation, which models input and output sequences by an encoder and a decoder in recurrent neural network (RNN) architecture respectively, a novel architecture, “CACA-RNN”, is proposed in this work. The proposed network consists of two RNNs in a cascaded architecture to process both context and racial information to perform video emotion classification. Results of the model were submitted to video emotion recognition sub-challenge in Multimodal Emotion Recognition Challenge (MEC2017). CACA-RNN outperforms the MEC2017 baseline (mAP of 21.7%): it achieved mAP of 45.51% on the testing set in the video only challenge.
机译:在构建人机交互(HCI)系统时,情感识别可以在许多应用程序中提供有关用户的重要信息。当前关于视觉情感识别的大多数研究都集中在探索种族特征上。但是,包括周围环境和人体在内的上下文信息也可以提供额外的线索,以更准确地识别情绪。受用于神经机器翻译的“序列到序列模型”的启发,该模型分别通过递归神经网络(RNN)架构中的编码器和解码器对输入和输出序列进行建模,提出了一种新颖的架构“ CACA-RNN” 。所提出的网络由级联架构中的两个RNN组成,以处理上下文和种族信息以执行视频情感分类。该模型的结果已提交给多模式情感识别挑战(MEC2017)中的视频情感识别子挑战。 CACA-RNN的表现优于MEC2017基准(mAP为21.7%):在仅视频挑战赛中的测试中,它的mAP达到了45.51%。

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