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Integrating Query-aware Segmentation and Cross-Attention for Robust VQA

9 July 2024
Wonjun Choi
Sangbeom Lee
Seungyeon Lee
Heechul Jung
Dong-Gyu Lee
ArXiv (abs)PDFHTML
Abstract

This paper introduces a method for VizWiz-VQA using LVLM with trainable cross-attention and LoRA finetuning. We train the model with the following conditions: 1) Training with original images. 2) Training with enhanced images using CLIPSeg to highlight or contrast the original image. 3) Training with integrating the output features of Vision Transformer (ViT) and CLIPSeg features of the original images. Then, we ensemble the results based on Levenshtein distance to enhance the prediction of the final answer. In the experiments, we demonstrate and analyze the proposed method's effectiveness.

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