We present a novel framework for audio-guided localized image stylization.Sound often provides information about the specific context of a scene and is closely related to a certain part of the scene or object.However,...We present a novel framework for audio-guided localized image stylization.Sound often provides information about the specific context of a scene and is closely related to a certain part of the scene or object.However,existing image stylization works have focused on stylizing the entire image using an image or text input.Stylizing a particular part of the image based on audio input is natural but challenging.This work proposes a framework in which a user provides an audio input to localize the target in the input image and another to locally stylize the target object or scene.We first produce a fine localization map using an audio-visual localization network leveraging CLIP embedding space.We then utilize an implicit neural representation(INR)along with the predicted localization map to stylize the target based on sound information.The INR manipulates local pixel values to be semantically consistent with the provided audio input.Our experiments show that the proposed framework outperforms other audio-guided stylization methods.Moreover,we observe that our method constructs concise localization maps and naturally manipulates the target object or scene in accordance with the given audio input.展开更多
基金supported by the Culture,Sports and Tourism R&D Program through the Korea Creative Content Agency grant funded by the Ministry of Culture,Sports and Tourism in 2022-(4D Content Generation and Copyright Protection with Artificial Intelligence,R2022020068,30%Research on neural watermark technology for copyright protection of generative AI 3D content,RS-2024-00348469,40%+1 种基金International Collaborative Research and Global Talent Development for the Development of Copyright Management and Protection Technologies for Generative AI,RS-2024-00345025,10%)the Institute of Information&Communications Technology Planning&Evaluation(IITP)grant funded by the Korea government(MSIT)(RS-2019-II190079,10%,No.2017-0-00417,10%).
文摘We present a novel framework for audio-guided localized image stylization.Sound often provides information about the specific context of a scene and is closely related to a certain part of the scene or object.However,existing image stylization works have focused on stylizing the entire image using an image or text input.Stylizing a particular part of the image based on audio input is natural but challenging.This work proposes a framework in which a user provides an audio input to localize the target in the input image and another to locally stylize the target object or scene.We first produce a fine localization map using an audio-visual localization network leveraging CLIP embedding space.We then utilize an implicit neural representation(INR)along with the predicted localization map to stylize the target based on sound information.The INR manipulates local pixel values to be semantically consistent with the provided audio input.Our experiments show that the proposed framework outperforms other audio-guided stylization methods.Moreover,we observe that our method constructs concise localization maps and naturally manipulates the target object or scene in accordance with the given audio input.