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Large language models (LLMs)-based image captioning has the capability of describing objects not explicitly observed in training data; yet novel objects occur frequently, necessitating the requirement of sustaining up-to-date object knowledge for open-world comprehension. Instead of relying on large amounts of data and/or scaling up network parameters, we introduce a highly effective retrieval-augmented image captioning method that prompts LLMs with object names retrieved from External Visual-name memory (EVCAP). We build ever-changing object knowledge memory using objects' visuals and names, enabling us to (i) update the memory at a minimal cost and (ii) effort-lessly augment LLMs with retrieved object names by uti-lizing a lightweight and fast-to-train model. Our model, which was trained only on the COCO dataset, can adapt to out-of-domain without requiring additional fine-tuning or retraining. Our experiments conducted on benchmarks and synthetic commonsense-violating data show that EV-CAP, with only 3.97M trainable parameters, exhibits superior performance compared to other methods based on frozen pretrained LLMs. Its performance is also competitive to specialist SOTAs that require extensive training.
Li et al. (Sun,) studied this question.