The paper introduces ScoreAdv, a novel approach for generating natural adversarial examples (UAEs) using diffusion models. It incorporates an adversarial guidance mechanism and saliency maps to shift the sampling distribution and inject visual information. Experiments on ImageNet and CelebA datasets demonstrate state-of-the-art attack success rates, image quality, and robustness against defenses.
Based solely on its title, the research paper "Exploring Visual Context for Weakly Supervised Person Search" investigates methods for leveraging visual cues to improve person search capabilities. This work explores advancements in weakly supervised learning techniques for identifying individuals across different image or video frames. The publication is associated with The Association for the Advancement of Artificial Intelligence (AAAI), indicating a contribution to the broader AI research community. Why it matters: Improvements in person search technology are vital for applications in security, surveillance, and intelligent systems, which have significant implications for smart city initiatives and public safety in the region.