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Main Authors: Pourreza, Reza, Dagli, Rishit, Bhattacharyya, Apratim, Panchal, Sunny, Berger, Guillaume, Memisevic, Roland
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.19356
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author Pourreza, Reza
Dagli, Rishit
Bhattacharyya, Apratim
Panchal, Sunny
Berger, Guillaume
Memisevic, Roland
author_facet Pourreza, Reza
Dagli, Rishit
Bhattacharyya, Apratim
Panchal, Sunny
Berger, Guillaume
Memisevic, Roland
contents AI models have made significant strides in recent years in their ability to describe and answer questions about real-world images. They have also made progress in the ability to converse with users in real-time using audio input. This raises the question: have we reached the point where AI models, connected to a camera and microphone, can converse with users in real-time about scenes and events that are unfolding live in front of the camera? This has been a long-standing goal in AI and is a prerequisite for real-world AI assistants and humanoid robots to interact with humans in everyday situations. In this work, we introduce a new dataset and benchmark, the Qualcomm Interactive Video Dataset (IVD), which allows us to assess the extent to which existing models can support these abilities, and to what degree these capabilities can be instilled through fine-tuning. The dataset is based on a simple question-answering setup, where users ask questions that the system has to answer, in real-time, based on the camera and audio input. We show that existing models fall far behind human performance on this task, and we identify the main sources for the performance gap. However, we also show that for many of the required perceptual skills, fine-tuning on this form of data can significantly reduce this gap.
format Preprint
id arxiv_https___arxiv_org_abs_2503_19356
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Can Vision-Language Models Answer Face to Face Questions in the Real-World?
Pourreza, Reza
Dagli, Rishit
Bhattacharyya, Apratim
Panchal, Sunny
Berger, Guillaume
Memisevic, Roland
Computer Vision and Pattern Recognition
AI models have made significant strides in recent years in their ability to describe and answer questions about real-world images. They have also made progress in the ability to converse with users in real-time using audio input. This raises the question: have we reached the point where AI models, connected to a camera and microphone, can converse with users in real-time about scenes and events that are unfolding live in front of the camera? This has been a long-standing goal in AI and is a prerequisite for real-world AI assistants and humanoid robots to interact with humans in everyday situations. In this work, we introduce a new dataset and benchmark, the Qualcomm Interactive Video Dataset (IVD), which allows us to assess the extent to which existing models can support these abilities, and to what degree these capabilities can be instilled through fine-tuning. The dataset is based on a simple question-answering setup, where users ask questions that the system has to answer, in real-time, based on the camera and audio input. We show that existing models fall far behind human performance on this task, and we identify the main sources for the performance gap. However, we also show that for many of the required perceptual skills, fine-tuning on this form of data can significantly reduce this gap.
title Can Vision-Language Models Answer Face to Face Questions in the Real-World?
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.19356