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Classification with Emotional Faces via a Robust Sparse Classifier

机译:通过强大的稀疏分类器对情感面进行分类

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We consider the problem of emotion recognition in faces as well as subject identification in the presence of emotional facial expressions. We propose alternative solutions for this identification and recognition problems using the idea of sparsity, in terms of Sparse Representation based Classifier (SRC) paradigm. In both cases, the problem is formulated as finding the most parsimonious set of representatives from a training set, which will best reconstruct the test image. For emotion classification, we considered the six fundamental states and the SRC performance was compared with that of the Active Appearance Model (AAM) algorithm [1]. For face recognition displaying various emotions, in order to test the robustness of SRC, we considered gallery faces of subjects having one or more expression variety while the probe faces had a different expression. We experimented with both the whole faces or faces observed with multiple blocks. The SRC algorithm, while not demanding any training, performed surprisingly well in both emotion identification across subjects and subject identification across emotions.
机译:我们考虑在情绪面部表情的存在中的情感认可问题以及主题识别。在基于稀疏表示的分类器(SRC)范例方面,我们为这种识别和识别问题提出了这种识别和识别问题的替代解决方案。在这两种情况下,该问题的制定为从训练集中找到最令人惊叹的代表集,这将最佳地重建测试图像。对于情感分类,我们考虑了六种基本状态,并将SRC性能与主动外观模型(AAM)算法进行了比较[1]。对于展示各种情绪的人脸识别,为了测试SRC的稳健性,我们认为具有一个或多个表达品种的受试者的画廊面,而探针面具有不同的表达。我们尝试使用多个块观察到的整个面或面部。 SRC算法,虽然不要求任何培训,但在跨学科的情绪识别和跨情感的识别方面表现出令人惊讶的。

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