2021
DOI: 10.48550/arxiv.2101.10578
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Malware Detection Using Frequency Domain-Based Image Visualization and Deep Learning

Abstract: We propose a novel method to detect and visualize malware through image classification. The executable binaries are represented as grayscale images obtained from the count of N-grams (N=2) of bytes in the Discrete Cosine Transform (DCT) domain and a neural network is trained for malware detection. A shallow neural network is trained for classification, and its accuracy is compared with deep-network architectures such as ResNet that are trained using transfer learning. Neither dis-assembly nor behavioral analys… Show more

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Cited by 3 publications
(6 citation statements)
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“…Mohammed et al 22 presented an image classification-based technique for detecting and visualizing malware. The executable binaries are represented as grayscale pictures in the discrete Cosine transform domain, and a neural network is trained to identify malware.…”
Section: Literature Surveymentioning
confidence: 99%
“…Mohammed et al 22 presented an image classification-based technique for detecting and visualizing malware. The executable binaries are represented as grayscale pictures in the discrete Cosine transform domain, and a neural network is trained to identify malware.…”
Section: Literature Surveymentioning
confidence: 99%
“…[16] devised an architecture to accept Markov image along with greyscale and RGB images, diversifying the information extracted from the binary file. [12] investigated an alternative by directly recording the frequency count of each byte bigram, and then performing discrete cosine transform (DCT) to desparsify the image.…”
Section: A Binary Sequence Classificationmentioning
confidence: 99%
“…The baseline for comparison against ImgConvAttn is the 3C2D model, implemented based on the description provided by [12]. The original design, proposed by [13], is a shallow CNN consisting of 3 convolution-and-max-pooling layers and 2 fully connected layers with training dropout.…”
Section: ) Imgconvattnmentioning
confidence: 99%
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