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Bi-modal First Impressions Recognition Using Temporally Ordered Deep Audio and Stochastic Visual Features

机译:双模态第一印象识别使用时间上有序的深度音频和随机视觉功能

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We propose a novel approach for First Impressions Recognition in terms of the Big Five personality-traits from short videos. The Big Five personality traits is a model to describe human personality using five broad categories: Extraversion, Agreeableness, Conscientiousness, Neu-roticism and Openness. We train two bi-modal end-to-end deep neural network architectures using temporally ordered audio and novel stochastic visual features from few frames, without over-fitting. We empirically show that the trained models perform exceptionally well, even after training from a small sub-portions of inputs. Our method is evaluated in ChaLearn LAP 2016 Apparent Personality Analysis (APA) competition using ChaLearn LAP APA2016 dataset and achieved excellent performance.
机译:我们提出了一种新颖的措施,以便在短途视频中的大五个人格特质方面进行第一次印象。五大人格特质是一种使用五大类别描述人类人格的模型:途径,令人满意,休闲,新兵和开放性。我们使用几帧的时间上有序的音频和新型随机视觉特征培训两个双模末端的深度神经网络架构,没有过于拟合。我们经验表明,训练型模型甚至在从输入的小部分训练之后均匀地执行。我们的方法是在Chalearn Lap 2016年表观人格分析(APA)竞争中评估的方法,使用Chalearn LAP APA2016数据集进行了卓越的性能。

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