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Fake-Face Image Classification using Improved Quantum-Inspired Evolutionary-based Feature Selection Method

机译:使用改进的基于量子启动的进化特征选择方法的假面图像分类

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Deep learning models have been quite successful in discriminating synthesized or edited fake-face images. However, in the case of small training data, transfer-learning is rather preferable. This is a complex process for high dimensional feature space due to the curse of dimensionality. To mitigate the same, this paper proposes a new feature selection method for the classification of manually created fake-face images. In the proposed method, a pre-trained deep learning model is used to extract features of an image. Next, an optimal feature subset is selected from the extracted features through an improved quantum-inspired evolutionary algorithm. Lastly, the elicited features are considered to perform the classification. Experiments are conducted on a publicly available manually created fake-face image dataset, namely Real and Fake Face Detection by Yonsei University. The performance of the proposed method is compared with two methods in terms of classification accuracy and the number of selected features. The experimental comparisons exhibit that the proposed method achieves promising results among the considered methods.
机译:深入学习模型在鉴别合成或编辑的假面图像方面非常成功。但是,在小训练数据的情况下,相当优选转移学习。这是由于维度诅咒导致的高维特征空间的复杂过程。为了缓解相同的方法,本文提出了一种新的特征选择方法,用于手动创建的假面图像分类。在所提出的方法中,预先接受过的深度学习模型用于提取图像的特征。接下来,通过改进的量子启动的进化算法从提取的特征中选择最佳特征子集。最后,被阐述的特征被认为是执行分类。实验是在公开的手动创建的假面图像数据集中进行的,即延世大学的真实和假脸检测。将所提出的方法的性能与两种方法进行比较,在分类准确性和所选功能的数量方面。实验比较表明,所提出的方法在考虑方法中实现了有希望的结果。

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