Facts are important in decision making in every situation, which is why it is important to catch deceptive information before they are accepted as facts. Deception detection in videos has gained traction in recent times for its various real-life application. In our approach, we extract facial action units using the facial action coding system which we use as parameters for training a deep learning model. We specifically use long short-term memory (LSTM) which we trained using the real-life trial dataset and it provided one of the best facial only approaches to deception detection. We also tested cross-dataset validation using the Real-life trial dataset, the Silesian Deception Dataset, and the Bag-of-lies Deception Dataset which has not yet been attempted by anyone else for a deception detection system. We tested and compared all datasets amongst each other individually and collectively using the same deep learning training model. The results show that adding different datasets for training worsen the accuracy of the model. One of the primary reasons is that the nature of these datasets vastly differs from one another.
翻译:在每种情况下,事实都是重要的决策,这就是为什么在被接受为事实之前必须先捕捉欺骗性信息的原因。视频中的欺骗性探测最近因其各种真实应用而获得了牵引力。在我们的方法中,我们利用面部动作编码系统提取面部动作单位,作为训练深层学习模型的参数。我们特别使用使用我们利用真实生命试验数据集培训的长期短期记忆(LSTM),它提供了最佳的面部探测方法之一。我们还利用真实生命试验数据集、西里西亚欺骗数据集和激光包侵入数据集测试交叉数据集验证,而其他人尚未尝试使用欺骗性探测系统。我们单独和集体使用同样的深层学习训练模型测试和比较了所有数据集。结果显示,为培训添加不同的数据集会降低模型的准确性。其中一个主要原因是,这些数据集的性质与另一个数据集有很大不同。