15,028 research outputs found

    Few-Shot Malware Detection Using A Novel Adversarial Reprogramming Model

    Get PDF
    The increasing sophistication of malware has made detecting and defending against new strains a major challenge for cybersecurity. One promising approach to this problem is using machine learning techniques that extract representative features and train classification models to detect malware in an early stage. However, training such machine learning-based malware detection models represents a significant challenge that requires a large number of high-quality labeled data samples while it is very costly to obtain them in real-world scenarios. In other words, training machine learning models for malware detection requires the capability to learn from only a few labeled examples. To address this challenge, in this thesis, we propose a novel adversarial reprogramming model for few-shot malware detection. Our model is based on the idea to re-purpose high-performance ImageNet classification model to perform malware detection using the features of malicious and benign files. We first embed the features of software files and a small perturbation to a host image chosen randomly from ImageNet, and then create an image dataset to train and test the model; after that, the model transforms the output into malware and benign classes. We evaluate the effectiveness of our model on a dataset of real-world malware and show that it significantly outperforms baseline few-shot learning methods. Additionally, we evaluate the impact of different pre-trained models, different data sizes, and different parameter values. Overall, our results suggest that the proposed adversarial reprogramming model is a promising direction for improving few-shot malware detection

    Face Image and Video Analysis in Biometrics and Health Applications

    Get PDF
    Computer Vision (CV) enables computers and systems to derive meaningful information from acquired visual inputs, such as images and videos, and make decisions based on the extracted information. Its goal is to acquire, process, analyze, and understand the information by developing a theoretical and algorithmic model. Biometrics are distinctive and measurable human characteristics used to label or describe individuals by combining computer vision with knowledge of human physiology (e.g., face, iris, fingerprint) and behavior (e.g., gait, gaze, voice). Face is one of the most informative biometric traits. Many studies have investigated the human face from the perspectives of various different disciplines, ranging from computer vision, deep learning, to neuroscience and biometrics. In this work, we analyze the face characteristics from digital images and videos in the areas of morphing attack and defense, and autism diagnosis. For face morphing attacks generation, we proposed a transformer based generative adversarial network to generate more visually realistic morphing attacks by combining different losses, such as face matching distance, facial landmark based loss, perceptual loss and pixel-wise mean square error. In face morphing attack detection study, we designed a fusion-based few-shot learning (FSL) method to learn discriminative features from face images for few-shot morphing attack detection (FS-MAD), and extend the current binary detection into multiclass classification, namely, few-shot morphing attack fingerprinting (FS-MAF). In the autism diagnosis study, we developed a discriminative few shot learning method to analyze hour-long video data and explored the fusion of facial dynamics for facial trait classification of autism spectrum disorder (ASD) in three severity levels. The results show outstanding performance of the proposed fusion-based few-shot framework on the dataset. Besides, we further explored the possibility of performing face micro- expression spotting and feature analysis on autism video data to classify ASD and control groups. The results indicate the effectiveness of subtle facial expression changes on autism diagnosis
    • …
    corecore