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- Title
Enhancing Low-Pass Filtering Detection on Small Digital Images Using Hybrid Deep Learning.
- Authors
Agarwal, Saurabh; Jung, Ki-Hyun
- Abstract
Detecting image manipulation is essential for investigating the processing history of digital images. In this paper, a novel scheme is proposed to detect the use of low-pass filters in image processing. A new convolutional neural network with a reasonable size was designed to identify three types of low-pass filters. The learning experiences of the three solvers were combined to enhance the detection ability of the proposed approach. Global pooling layers were employed to protect the information loss between the convolutional layers, and a new global variance pooling layer was introduced to improve detection accuracy. The extracted features from the convolutional neural network were mapped to the frequency domain to enrich the feature set. A leaky Rectified Linear Unit (ReLU) layer was discovered to perform better than the traditional ReLU layer. A tri-layered neural network classifier was employed to classify low-pass filters with various parameters into two, four, and ten classes. As detecting low-pass filtering is relatively easy on large-dimension images, the experimental environment was restricted to small images of 30 × 30 and 60 × 60 pixels. The proposed scheme achieved 80.12% and 90.65% detection accuracy on ten categories of images compressed with JPEG and a quality factor 75 on 30 × 30 and 60 × 60 images, respectively.
- Subjects
DEEP learning; CONVOLUTIONAL neural networks; DIGITAL images; IMAGE processing; QUALITY factor; JPEG (Image coding standard)
- Publication
Electronics (2079-9292), 2023, Vol 12, Issue 12, p2637
- ISSN
2079-9292
- Publication type
Article
- DOI
10.3390/electronics12122637