Convolutional neural networks for image spam detection
Tazmina Sharmin, Fabio Di Troia, Katerina Potika, Mark Stamp
Abstract
Spam can be defined as unsolicited bulk e-mail. In an effort to evade text-based filters, spammers sometimes embed spam text in an image, which is referred to as image spam. In this research, we consider the problem of image spam detection, based on image analysis. We apply convolutional neural networks (CNN) to this problem, we compare the results obtained using CNNs to other machine learning techniques, and we compare our results to previous related work. We consider both real-world image spam and challenging image spam-like datasets. Our results improve on previous work by employing CNNs based on a novel feature set consisting of a combination of the raw image and Canny edges.
Topics & Concepts
Convolutional neural networkComputer scienceImage (mathematics)Artificial intelligencePattern recognition (psychology)Set (abstract data type)Feature (linguistics)SpambotContextual image classificationBag-of-words modelFeature detection (computer vision)Machine learningComputer visionImage processingSpammingWorld Wide WebThe InternetProgramming languagePhilosophyLinguisticsAnomaly Detection Techniques and ApplicationsCOVID-19 diagnosis using AIImbalanced Data Classification Techniques