Skip to content
GCC AI Research

Search

Results for "AnomalyGen"

Teaching robots to spot danger at home: A new approach to be presented at NAACL

MBZUAI ·

MBZUAI researchers developed AnomalyGen, a framework using foundation models to help household robots anticipate and react to dangerous scenarios. The system uses collaborative agents to brainstorm hazards, recreates scenarios in a 3D simulation, and develops mitigation methods. AnomalyGen will be presented at the upcoming NAACL conference. Why it matters: This research advances the development of trustworthy AI for real-world applications, specifically enabling robots to proactively ensure safety in home environments.

Learning Time-Series Representations by Hierarchical Uniformity-Tolerance Latent Balancing

arXiv ·

The paper introduces TimeHUT, a new method for learning time-series representations using hierarchical uniformity-tolerance balancing of contrastive representations. TimeHUT employs a hierarchical setup to learn both instance-wise and temporal information, along with a temperature scheduler to balance uniformity and tolerance. The method was evaluated on UCR, UAE, Yahoo, and KPI datasets, demonstrating superior performance in classification tasks and competitive results in anomaly detection.

VENOM: Text-driven Unrestricted Adversarial Example Generation with Diffusion Models

arXiv ·

The paper introduces VENOM, a text-driven framework for generating high-quality unrestricted adversarial examples using diffusion models. VENOM unifies image content generation and adversarial synthesis into a single reverse diffusion process, enhancing both attack success rate and image quality. The framework incorporates an adaptive adversarial guidance strategy with momentum to ensure the generated adversarial examples align with the distribution of natural images.

GenAI Content Detection Task 1: English and Multilingual Machine-Generated Text Detection: AI vs. Human

arXiv ·

The GenAI Content Detection Task 1 is a shared task on detecting machine-generated text, featuring monolingual (English) and multilingual subtasks. The task, part of the GenAI workshop at COLING 2025, attracted 36 teams for the English subtask and 26 for the multilingual one. The organizers provide a detailed overview of the data, results, system rankings, and analysis of the submitted systems.