This paper is the basis paper for the accepted IJCNN challenge One-Minute Gradual-Emotion Recognition (OMG-Emotion) by which we hope to foster long-emotion classification using neural models for the benefit of the IJCNN community. The proposed corpus has as the novelty the data collection and annotation strategy based on emotion expressions which evolve over time into a specific context. Different from other corpora, we propose a novel multimodal corpus for emotion expression recognition, which uses gradual annotations with a focus on contextual emotion expressions. Our dataset was collected from Youtube videos using a specific search strategy based on restricted keywords and filtering which guaranteed that the data follow a gradual emotion expression transition, i.e. emotion expressions evolve over time in a natural and continuous fashion. We also provide an experimental protocol and a series of unimodal baseline experiments which can be used to evaluate deep and recurrent neural models in a fair and standard manner.
翻译:本文是被接受的IJCNN挑战“一中渐变-情感识别”的基础文件,我们希望通过该文件促进使用神经模型对神经进行长期情感分类,以造福IJCNN社区。拟议的文稿将基于情感表达的数据收集和批注战略作为新奇,这种情感表达方式随着时间的演变演变而演变成一个具体的背景。不同于其他公司,我们提议了一个新的情感表达识别多式程序,该程序使用渐进式说明,重点是背景情感表达方式。我们的数据集是从Youtube视频中收集的,采用了基于限制性关键词和过滤器的具体搜索策略,保证数据在情感表达方式的逐渐转变之后,即情感表达方式在自然和持续地演变。我们还提供了实验协议和一系列单一的基线实验,可以用来以公平和标准的方式评估深层和反复的神经模型。