Litcius/Paper detail

Visual Question Answering on 360° Images

Shih-Han Chou, Wei‐Lun Chao, Wei‐Sheng Lai, Min Sun, Ming–Hsuan Yang

202027 citationsDOI

Abstract

In this work, we introduce VQA 360°, a novel task of visual question answering on 360° images. Unlike a normal field-of-view image, a 360° image captures the entire visual content around the optical center of a camera, demanding more sophisticated spatial understanding and reasoning. To address this problem, we collect the first VQA 360° dataset, containing around 17,000 real-world image-question-answer triplets for a variety of question types. We then study two different VQA models on VQA 360°, including one conventional model that takes an equirectangular image (with intrinsic distortion) as input and one dedicated model that first projects a 360° image onto cubemaps and subsequently aggregates the information from multiple spatial resolutions. We demonstrate that the cubemap-based model with multi-level fusion and attention diffusion performs favorably against other variants and the equirectangular-based models. Nevertheless, the gap between the humans' and machines' performance reveals the need for more advanced VQA 360° algorithms. We, therefore, expect our dataset and studies to serve as the benchmark for future development in this challenging task. Dataset, code, and pre-trained models are available online.

Topics & Concepts

Computer scienceQuestion answeringBenchmark (surveying)Task (project management)Image (mathematics)Artificial intelligenceDistortion (music)Field (mathematics)Variety (cybernetics)Machine learningInformation retrievalComputer visionPattern recognition (psychology)ManagementMathematicsEconomicsAmplifierPure mathematicsComputer networkBandwidth (computing)GeodesyGeographyMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot Learning