Semantic Consistency
Semantic consistency, in various AI contexts, focuses on ensuring that information across different modalities (text, images, audio) or within a single modality remains logically coherent and meaningfully aligned. Current research emphasizes developing methods to detect and mitigate semantic inconsistencies, often employing techniques like contrastive learning, graph neural networks, and diffusion models to improve the alignment of multimodal representations and enhance the reliability of AI systems. This work is crucial for improving the trustworthiness and interpretability of AI outputs, with applications ranging from robust question answering and image generation to reliable robot behavior and accurate data analysis. The ultimate goal is to build more reliable and understandable AI systems.
Papers
Co-Driven Recognition of Semantic Consistency via the Fusion of Transformer and HowNet Sememes Knowledge
Fan Chen, Yan Huang, Xinfang Zhang, Kang Luo, Jinxuan Zhu, Ruixian He
USR: Unsupervised Separated 3D Garment and Human Reconstruction via Geometry and Semantic Consistency
Yue Shi, Yuxuan Xiong, Jingyi Chai, Bingbing Ni, Wenjun Zhang