Litcius/Paper detail

Backdoor Attacks Against Deep Image Compression via Adaptive Frequency Trigger

Yi Yu, Yufei Wang, Wenhan Yang, Shijian Lu, Yap‐Peng Tan, Alex C. Kot

202338 citationsDOIOpen Access PDF

Abstract

Recent deep-learning-based compression methods have achieved superior performance compared with traditional approaches. However, deep learning models have proven to be vulnerable to backdoor attacks, where some specific trigger patterns added to the input can lead to malicious behavior of the models. In this paper, we present a novel backdoor attack with multiple triggers against learned image compression models. Motivated by the widely used discrete cosine transform (DCT) in existing compression systems and standards, we propose a frequency-based trigger injection model that adds triggers in the DCT domain. In particular, we design several attack objectives for various attacking scenarios, including: 1) attacking compression quality in terms of bit-rate and reconstruction quality; 2) attacking task-driven measures, such as downstream face recognition and semantic segmentation. Moreover, a novel simple dynamic loss is designed to balance the influence of different loss terms adaptively, which helps achieve more efficient training. Extensive experiments show that with our trained trigger injection models and simple modification of encoder parameters (of the compression model), the proposed attack can successfully inject several backdoors with corresponding triggers in a single image compression model.

Topics & Concepts

BackdoorComputer scienceDiscrete cosine transformDeep learningArtificial intelligenceImage compressionCompression artifactLossless compressionData compressionComputer visionImage (mathematics)Image processingComputer securityDigital Media Forensic DetectionAdvanced Steganography and Watermarking TechniquesAdvanced Image Processing Techniques
Backdoor Attacks Against Deep Image Compression via Adaptive Frequency Trigger | Litcius