面向教学情境的面部表情数据集开发:初步研究

Pipit Utami, Rudy Hartanto, I. Soesanti
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引用次数: 0

摘要

使用Deep-CNN模型可以提高FER精度。然而,该模型在训练和测试过程中需要一个数据集。同时,具有特定情境表情的面部表情数据集仍然缺乏用于情感识别的数据集。一般来说,现有的数据集显示通用的表达式。因此,本文提出了一个包含教学环境中基本和特定复杂情绪的数据集,可用于Deep-CNN模型。开发的数据集包括教学情境中的6种基本表达、中性表达和5种特定表达,即焦虑、享受、希望、绝望和羞耻。该数据集来自52名受访者。数据集开发方法包括需求识别、数据收集、数据验证、数据调整、数据训练和数据评估。通过测试四种Deep-CNN架构的数据集测试性能表明,数据集中的多个情感类可以很好地分类。使用简单CNN的准确率为90%,而三种异常的准确率分别为88%、92%和93%。同样,在准确性方面,对于精度、召回率和f1score,来自四种CNN架构的测试数据集的结果显示出良好的值。简单CNN的训练时间为49.55分钟,三种例外的训练时间分别为47.67分钟、32.69分钟和32.56分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Development of Facial Expressions Dataset for Teaching Context: Preliminary Research
Increasing the FER accuracy can be done with the Deep-CNN model. However, the model requires a dataset in the training and testing process. Meanwhile, there is still a scarcity of facial expression datasets with expressions in specific contexts for emotion recognition. In general, the existing datasets show common expressions. Therefore, this paper proposes a dataset that includes basic and specific complex emotions in teaching contexts that can be used in the Deep-CNN model. The developed dataset consists of six basic expressions, neutral, and five specific expressions in the teaching context, namely anxiety, enjoyment, hope, hopelessness, and shame. The dataset was obtained from 52 respondents. Dataset development methods consist of needs identification, data collection, data validation, data adjustment, data training and data evaluation. Dataset test performance from testing the four Deep-CNN architectures shows that the multiple emotion classes in the dataset can be classified well. Accuracy using simple CNN is 90%, while the three types of Xception vary with values of 88%, 92% and 93%. Likewise, with accuracy, for precision, recall and f1score from the results of testing datasets with four CNN architectures show good values. The training time on simple CNN took 49.55 minutes and for the three types of Xception it was 47.67 minutes, 32.69 minutes, and 32.56 minutes.
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