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Main Authors: Zhou, Yongchen, Jiang, Richard
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.10402
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author Zhou, Yongchen
Jiang, Richard
author_facet Zhou, Yongchen
Jiang, Richard
contents In the domain of computer vision, the restoration of missing information in video frames is a critical challenge, particularly in applications such as autonomous driving and surveillance systems. This paper introduces the Siamese Masked Conditional Variational Autoencoder (SiamMCVAE), leveraging a siamese architecture with twin encoders based on vision transformers. This innovative design enhances the model's ability to comprehend lost content by capturing intrinsic similarities between paired frames. SiamMCVAE proficiently reconstructs missing elements in masked frames, effectively addressing issues arising from camera malfunctions through variational inferences. Experimental results robustly demonstrate the model's effectiveness in restoring missing information, thus enhancing the resilience of computer vision systems. The incorporation of Siamese Vision Transformer (SiamViT) encoders in SiamMCVAE exemplifies promising potential for addressing real-world challenges in computer vision, reinforcing the adaptability of autonomous systems in dynamic environments.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Reconstructing the Invisible: Video Frame Restoration through Siamese Masked Conditional Variational Autoencoder
Zhou, Yongchen
Jiang, Richard
Computer Vision and Pattern Recognition
In the domain of computer vision, the restoration of missing information in video frames is a critical challenge, particularly in applications such as autonomous driving and surveillance systems. This paper introduces the Siamese Masked Conditional Variational Autoencoder (SiamMCVAE), leveraging a siamese architecture with twin encoders based on vision transformers. This innovative design enhances the model's ability to comprehend lost content by capturing intrinsic similarities between paired frames. SiamMCVAE proficiently reconstructs missing elements in masked frames, effectively addressing issues arising from camera malfunctions through variational inferences. Experimental results robustly demonstrate the model's effectiveness in restoring missing information, thus enhancing the resilience of computer vision systems. The incorporation of Siamese Vision Transformer (SiamViT) encoders in SiamMCVAE exemplifies promising potential for addressing real-world challenges in computer vision, reinforcing the adaptability of autonomous systems in dynamic environments.
title Reconstructing the Invisible: Video Frame Restoration through Siamese Masked Conditional Variational Autoencoder
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.10402