Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Reverse Image Retrieval Cues Parametric Memory in Multimodal LLMs

About

Despite impressive advances in recent multimodal large language models (MLLMs), state-of-the-art models such as from the GPT-4 suite still struggle with knowledge-intensive tasks. To address this, we consider Reverse Image Retrieval (RIR) augmented generation, a simple yet effective strategy to augment MLLMs with web-scale reverse image search results. RIR robustly improves knowledge-intensive visual question answering (VQA) of GPT-4V by 37-43%, GPT-4 Turbo by 25-27%, and GPT-4o by 18-20% in terms of open-ended VQA evaluation metrics. To our surprise, we discover that RIR helps the model to better access its own world knowledge. Concretely, our experiments suggest that RIR augmentation helps by providing further visual and textual cues without necessarily containing the direct answer to a query. In addition, we elucidate cases in which RIR can hurt performance and conduct a human evaluation. Finally, we find that the overall advantage of using RIR makes it difficult for an agent that can choose to use RIR to perform better than an approach where RIR is the default setting.

Jialiang Xu, Michael Moor, Jure Leskovec• 2024

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringOK-VQA (test)
Accuracy62.2
327
Visual Question AnsweringE-VQA (test)
Accuracy19.8
85
Visual Question AnsweringInfoSeek (test)
Accuracy23.3
81
Showing 3 of 3 rows

Other info

Follow for update