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Source camera identification model: Classifier learning, role of learning curves and their interpretation

机译:摄像机识别源模型:分类器学习,学习曲线的作用及其解释

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Source camera identification is the problem of associating an image with its source device. Majority of the existing source detection techniques have their operations based on machine learning principles, and report a considerably high accuracy as far as prediction is concerned. Such techniques follow a basic operating principle: extract appropriate features from images, train classifier for camera prediction, predict the image source class. In the source camera identification problem, the tolerance for false acceptance rate is extremely low, ideally zero. Hence, it is imperative that the model built should predict the source of unknown data with high accuracy. In this scenario, the learning process that a model undergoes, plays the most crucial role, and subsequently affects the accuracy of prediction majorly. In this paper, we discuss various techniques to make an image source identification model learn properly, and establish the importance of concentrating on learning part of a system, through proper interpretation of learning curves. We tested the approaches on the Dresden image database. Our experimental results prove that in this field of research, for fair evaluation and comparison of state-of-the-art techniques, the use of credible benchmark database as Dresden is uncompromisable, as compared to proprietary image datasets.
机译:源摄像机识别是将图像与其源设备相关联的问题。现有的大多数源检测技术都基于机器学习原理进行操作,并且就预测而言报告了相当高的准确性。这些技术遵循基本的工作原理:从图像中提取适当的特征,训练用于相机预测的分类器,预测图像源类别。在源摄像机识别问题中,错误接受率的容差极低,理想情况下为零。因此,当务之急是建立的模型应该以高精度预测未知数据的来源。在这种情况下,模型所经历的学习过程起着至关重要的作用,随后会严重影响预测的准确性。在本文中,我们讨论了使图像源识别模型正确学习的各种技术,并通过对学习曲线的正确解释,确立了专注于系统学习部分的重要性。我们在德累斯顿图像数据库上测试了这些方法。我们的实验结果证明,在该研究领域中,与专有图像数据集相比,对于可靠的基准数据库(如德累斯顿)的使用,对于公平评估和最新技术的比较是不可行的。

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