Detecting and Understanding Hateful Contents in Memes Through Captioning and Visual Question-Answering
By: Ali Anaissi , Junaid Akram , Kunal Chaturvedi and more
Potential Business Impact:
Finds hate hidden in pictures and words.
Memes are widely used for humor and cultural commentary, but they are increasingly exploited to spread hateful content. Due to their multimodal nature, hateful memes often evade traditional text-only or image-only detection systems, particularly when they employ subtle or coded references. To address these challenges, we propose a multimodal hate detection framework that integrates key components: OCR to extract embedded text, captioning to describe visual content neutrally, sub-label classification for granular categorization of hateful content, RAG for contextually relevant retrieval, and VQA for iterative analysis of symbolic and contextual cues. This enables the framework to uncover latent signals that simpler pipelines fail to detect. Experimental results on the Facebook Hateful Memes dataset reveal that the proposed framework exceeds the performance of unimodal and conventional multimodal models in both accuracy and AUC-ROC.
Similar Papers
Detecting and Mitigating Hateful Content in Multimodal Memes with Vision-Language Models
CV and Pattern Recognition
Changes mean memes into funny ones.
Improving Multimodal Hateful Meme Detection Exploiting LMM-Generated Knowledge
CV and Pattern Recognition
Finds mean memes using pictures and words.
CAMU: Context Augmentation for Meme Understanding
CV and Pattern Recognition
Finds hateful messages hidden in pictures and words.