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 analysis of malware is required for these methods. Motivated by the visual similarity of these images for different malware families, we compare our deep neural network models with standard image features like GIST descriptors to evaluate th...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Research in the field of malware classification often relies on machine learning models that are tra...
In recent years the amount of malware spreading through the internet and infecting computers and oth...
Malware detection plays a crucial role in computer security. Recent researches mainly use machine le...
The persistent shortage of cybersecurity professionals combined with enterprise networks tasked with...
The persistent shortage of cybersecurity professionals combined with enterprise networks tasked with...
The number of malicious files detected every year are counted by millions. One of the main reasons f...
In this study, we delve into the realm of malware detection and classification, leveraging the capab...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
The number of malicious files detected every year are counted by millions. One of the main reasons f...
Malicious attacks to software applications are on the rise as more people use Internet of things (Io...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
The increasing sophistication of malware variants such as encryption, polymorphism, and obfuscation ...
© 2018 IEEE. In this paper, we propose a deep learning framework for malware classification. There h...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Research in the field of malware classification often relies on machine learning models that are tra...
In recent years the amount of malware spreading through the internet and infecting computers and oth...
Malware detection plays a crucial role in computer security. Recent researches mainly use machine le...
The persistent shortage of cybersecurity professionals combined with enterprise networks tasked with...
The persistent shortage of cybersecurity professionals combined with enterprise networks tasked with...
The number of malicious files detected every year are counted by millions. One of the main reasons f...
In this study, we delve into the realm of malware detection and classification, leveraging the capab...
To prevent detection, attackers frequently design systems to rearrange and rewrite their malware aut...
The number of malicious files detected every year are counted by millions. One of the main reasons f...
Malicious attacks to software applications are on the rise as more people use Internet of things (Io...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
The increasing sophistication of malware variants such as encryption, polymorphism, and obfuscation ...
© 2018 IEEE. In this paper, we propose a deep learning framework for malware classification. There h...
Any programme or code that is damaging to our systems or networks is known as Malware or malicious s...
According to AV vendors malicious software has been growing exponentially last years. One of the mai...
Research in the field of malware classification often relies on machine learning models that are tra...
In recent years the amount of malware spreading through the internet and infecting computers and oth...