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Bibliographic Details
Main Authors: Sarkar, Meenakshi, Ghose, Debasish
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.05439
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author Sarkar, Meenakshi
Ghose, Debasish
author_facet Sarkar, Meenakshi
Ghose, Debasish
contents Long-term video generation and prediction remain challenging tasks in computer vision, particularly in partially observable scenarios where cameras are mounted on moving platforms. The interaction between observed image frames and the motion of the recording agent introduces additional complexities. To address these issues, we introduce the Action-Conditioned Video Generation (ACVG) framework, a novel approach that investigates the relationship between actions and generated image frames through a deep dual Generator-Actor architecture. ACVG generates video sequences conditioned on the actions of robots, enabling exploration and analysis of how vision and action mutually influence one another in dynamic environments. We evaluate the framework's effectiveness on an indoor robot motion dataset which consists of sequences of image frames along with the sequences of actions taken by the robotic agent, conducting a comprehensive empirical study comparing ACVG to other state-of-the-art frameworks along with a detailed ablation study.
format Preprint
id arxiv_https___arxiv_org_abs_2404_05439
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Action-conditioned video data improves predictability
Sarkar, Meenakshi
Ghose, Debasish
Computer Vision and Pattern Recognition
Long-term video generation and prediction remain challenging tasks in computer vision, particularly in partially observable scenarios where cameras are mounted on moving platforms. The interaction between observed image frames and the motion of the recording agent introduces additional complexities. To address these issues, we introduce the Action-Conditioned Video Generation (ACVG) framework, a novel approach that investigates the relationship between actions and generated image frames through a deep dual Generator-Actor architecture. ACVG generates video sequences conditioned on the actions of robots, enabling exploration and analysis of how vision and action mutually influence one another in dynamic environments. We evaluate the framework's effectiveness on an indoor robot motion dataset which consists of sequences of image frames along with the sequences of actions taken by the robotic agent, conducting a comprehensive empirical study comparing ACVG to other state-of-the-art frameworks along with a detailed ablation study.
title Action-conditioned video data improves predictability
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2404.05439