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Papers/Answer Mining from a Pool of Images: Towards Retrieval-Bas...

Answer Mining from a Pool of Images: Towards Retrieval-Based Visual Question Answering

Abhirama Subramanyam Penamakuri, Manish Gupta, Mithun Das Gupta, Anand Mishra

2023-06-29Question AnsweringRetrievalVisual Question Answering (VQA)Answer GenerationVisual Question Answering
PaperPDFCode(official)

Abstract

We study visual question answering in a setting where the answer has to be mined from a pool of relevant and irrelevant images given as a context. For such a setting, a model must first retrieve relevant images from the pool and answer the question from these retrieved images. We refer to this problem as retrieval-based visual question answering (or RETVQA in short). The RETVQA is distinctively different and more challenging than the traditionally-studied Visual Question Answering (VQA), where a given question has to be answered with a single relevant image in context. Towards solving the RETVQA task, we propose a unified Multi Image BART (MI-BART) that takes a question and retrieved images using our relevance encoder for free-form fluent answer generation. Further, we introduce the largest dataset in this space, namely RETVQA, which has the following salient features: multi-image and retrieval requirement for VQA, metadata-independent questions over a pool of heterogeneous images, expecting a mix of classification-oriented and open-ended generative answers. Our proposed framework achieves an accuracy of 76.5% and a fluency of 79.3% on the proposed dataset, namely RETVQA and also outperforms state-of-the-art methods by 4.9% and 11.8% on the image segment of the publicly available WebQA dataset on the accuracy and fluency metrics, respectively.

Results

TaskDatasetMetricValueModel
Visual Question Answering (VQA)RetVQAAccuarcy76.5MI-BART
Visual Question Answering (VQA)RetVQAAccuracy * Fluency70.9MI-BART

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