Logo image
Retrieving-to-Answer: Zero-Shot Video Question Answering with Frozen Large Language Models
Conference proceeding

Retrieving-to-Answer: Zero-Shot Video Question Answering with Frozen Large Language Models

Junting Pan, Ziyi Lin, Yuying Ge, Xiatian Zhu, Renrui Zhang, Yi Wang, Yu Qiao and Hongsheng Li
2023 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW), pp.272-283
02/10/2023

Abstract

Benchmark testing Computer vision Conferences Large Language Models Multimodal Models Predictive models Question answering (information retrieval) Training Video Question Answering Visualization
Video Question Answering (VideoQA) has been significantly advanced from the scaling of recent Large Language Models (LLMs). The key idea is to convert the visual information into the language feature space so that the capacity of LLMs can be fully exploited. Existing VideoQA methods typically take two paradigms: (1) learning cross-modal alignment, and (2) using an off-the-shelf captioning model to describe the visual data. However, the first design needs costly training on many extra multi-modal data, whilst the second is further limited by limited domain generalization. To address these limitations, a simple yet effective Retrieving-to-Answer (R2A) framework is proposed. Given an input video, R2A first retrieves a set of semantically similar texts from a generic text corpus using a pre-trained multi-modal model (e.g., CLIP). With both the question and the retrieved texts, a LLM (e.g., DeBERTa) can be directly used to yield a desired answer. Without the need for cross-modal fine-tuning, R2A allows for all the key components (e.g., LLM, retrieval model, and text corpus) to plug-and-play. Extensive experiments on several VideoQA benchmarks show that despite with 1.3B parameters and no fine-tuning, our R2A can outperform the 61× larger Flamingo-80B model [1] even additionally trained on nearly 2.1B multi-modal data.

Metrics

1 Record Views

Details

Logo image

Usage Policy