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Modified deep belief network based human emotion recognition with multiscale features from video sequences

机译:基于深度信仰网络的人类情感识别与视频序列的多尺度特征

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Emotion recognition from human faces are recently considered as growing topic for the applications in HCI (human-computer interaction) field. Therefore, a new framework is introduced in this method for emotion recognition from video. Human faces may carry huge features which increase the complexity of recognizing the emotions from the give video. Therefore, to minimize such defect, the wrapper based feature selection technique is introduced which reduce the complexity of proposed recognition framework. Initially, the frames from the input video is preprocessed. Next, the features exhibited by each emotions are extracted with geometric and local binary pattern-based feature extraction methods. Then, the features that reduce the performance of recognition technique is avoided using a feature selection algorithm. It selects the features that provides effective result on recognition process. Finally, the selected features are provided to deep belief network (DBN) for emotion recognition. The weight parameter selection of DBN is improved using an efficient Harris Hawk optimization algorithm. The performance of presented architecture is evaluated using a three different datasets they are FAMED, CK+, and MMI. The overall rate shown by proposed architecture is found better than existing methods. Furthermore, the precision, recall, and specificity are also evaluated for six different emotions (angry, disgust, fear, happy, sad, and surprise) in this proposed method. This entire emotion recognition process is implemented in Python platform.
机译:人类面部的情感识别最近被认为是HCI(人机交互)领域应用程序的日益增长的话题。因此,以这种方法引入了一种新的框架,用于从视频的情感识别。人类面临可能带有巨大的特征,这增加了识别给节约视频的情绪的复杂性。因此,为了最小化这种缺陷,引入了基于包装器的特征选择技术,其降低了所提出的识别框架的复杂性。最初,来自输入视频的帧被预处理。接下来,通过基于几何和局部二进制图案的特征提取方法提取每个情绪呈现的特征。然后,使用特征选择算法避免降低识别技术性能的特征。它选择在识别过程中提供有效结果的功能。最后,将所选功能提供给深度信仰网络(DBN)以进行情感识别。使用高效的Harris Hawk优化算法改进了DBN的权重参数选择。使用三个不同的数据集来评估所呈现架构的性能,它们是着名的,CK +和MMI。由拟议架构所示的总体速率比现有方法更好。此外,在这一提出的方法中,还评估了精确,召回和特异性的六种不同的情绪(愤怒,厌恶,恐惧,快乐,悲伤,令人遗憾,令人悲伤和惊喜。整个情感识别过程是在Python平台中实现的。

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