论文标题
一个新型的基于层次块块的卷积神经网络,用于源摄像机模型识别
A Novel Hierarchical-Classification-Block Based Convolutional Neural Network for Source Camera Model Identification
论文作者
论文摘要
由于互联网基础架构的快速适应,社交媒体的日益普及和数码相机,数字安全一直是研究兴趣的积极领域。由于工作原理的固有差异以生成图像,因此不同的相机品牌留下了不同的内在处理噪声,可用于识别相机品牌。在过去的十年中,已经提出了许多信号处理和基于深度学习的方法来识别和隔离图像中的场景细节以检测源摄像机品牌。一种突出的解决方案是利用分层分类系统,而不是传统的单分类器方法。不同的单独网络用于品牌级别和模型级源摄像头标识。这种方法可以更好地缩放扩展,并且需要最少的修改,以将新的相机品牌/型号添加到解决方案中。但是,对品牌和模型级分类使用不同的全面网络大大提高了记忆消耗和训练的复杂性。此外,从不同网络的初始图层中提取的低级特征通常是重合的,从而导致重量冗余。为了减轻训练和内存复杂性,我们建议分类器块级别的层次结构系统,而不是用于源摄像机模型分类的网络级别。我们提出的方法不仅导致参数大大少,而且还保留了添加具有最小修改的新相机模型的能力。对公开可用的德累斯顿数据集进行了彻底的实验表明,我们提出的方法可以达到相同的最先进的性能,但与最先进的基于网络级别层次结构的系统相比,需要更少的参数。
Digital security has been an active area of research interest due to the rapid adaptation of internet infrastructure, the increasing popularity of social media, and digital cameras. Due to inherent differences in working principles to generate an image, different camera brands left behind different intrinsic processing noises which can be used to identify the camera brand. In the last decade, many signal processing and deep learning-based methods have been proposed to identify and isolate this noise from the scene details in an image to detect the source camera brand. One prominent solution is to utilize a hierarchical classification system rather than the traditional single-classifier approach. Different individual networks are used for brand-level and model-level source camera identification. This approach allows for better scaling and requires minimal modifications for adding a new camera brand/model to the solution. However, using different full-fledged networks for both brand and model-level classification substantially increases memory consumption and training complexity. Moreover, extracted low-level features from the different network's initial layers often coincide, resulting in redundant weights. To mitigate the training and memory complexity, we propose a classifier-block-level hierarchical system instead of a network-level one for source camera model classification. Our proposed approach not only results in significantly fewer parameters but also retains the capability to add a new camera model with minimal modification. Thorough experimentation on the publicly available Dresden dataset shows that our proposed approach can achieve the same level of state-of-the-art performance but requires fewer parameters compared to a state-of-the-art network-level hierarchical-based system.