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Main Authors: Liao, Tianli, Wang, Ran, Zhang, Siqing, Li, Lei, Liu, Guangen, Zhao, Chenyang, Cao, Heling, Li, Peng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.27236
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author Liao, Tianli
Wang, Ran
Zhang, Siqing
Li, Lei
Liu, Guangen
Zhao, Chenyang
Cao, Heling
Li, Peng
author_facet Liao, Tianli
Wang, Ran
Zhang, Siqing
Li, Lei
Liu, Guangen
Zhao, Chenyang
Cao, Heling
Li, Peng
contents Eliminating geometric distortion in semantically important regions remains an intractable challenge in image retargeting. This paper presents Object-IR, a self-supervised architecture that reformulates image retargeting as a learning-based mesh warping optimization problem, where the mesh deformation is guided by object appearance consistency and geometric-preserving constraints. Given an input image and a target aspect ratio, we initialize a uniform rigid mesh at the output resolution and use a convolutional neural network to predict the motion of each mesh grid and obtain the deformed mesh. The retargeted result is generated by warping the input image according to the rigid mesh in the input image and the deformed mesh in the output resolution. To mitigate geometric distortion, we design a comprehensive objective function incorporating a) object-consistent loss to ensure that the important semantic objects retain their appearance, b) geometric-preserving loss to constrain simple scale transform of the important meshes, and c) boundary loss to enforce a clean rectangular output. Notably, our self-supervised paradigm eliminates the need for manually annotated retargeting datasets by deriving supervision directly from the input's geometric and semantic properties. Extensive evaluations on the RetargetMe benchmark demonstrate that our Object-IR achieves state-of-the-art performance, outperforming existing methods in quantitative metrics and subjective visual quality assessments. The framework efficiently processes arbitrary input resolutions (average inference time: 0.009s for 1024x683 resolution) while maintaining real-time performance on consumer-grade GPUs. The source code will soon be available at https://github.com/tlliao/Object-IR.
format Preprint
id arxiv_https___arxiv_org_abs_2510_27236
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Object-IR: Leveraging Object Consistency and Mesh Deformation for Self-Supervised Image Retargeting
Liao, Tianli
Wang, Ran
Zhang, Siqing
Li, Lei
Liu, Guangen
Zhao, Chenyang
Cao, Heling
Li, Peng
Computer Vision and Pattern Recognition
Eliminating geometric distortion in semantically important regions remains an intractable challenge in image retargeting. This paper presents Object-IR, a self-supervised architecture that reformulates image retargeting as a learning-based mesh warping optimization problem, where the mesh deformation is guided by object appearance consistency and geometric-preserving constraints. Given an input image and a target aspect ratio, we initialize a uniform rigid mesh at the output resolution and use a convolutional neural network to predict the motion of each mesh grid and obtain the deformed mesh. The retargeted result is generated by warping the input image according to the rigid mesh in the input image and the deformed mesh in the output resolution. To mitigate geometric distortion, we design a comprehensive objective function incorporating a) object-consistent loss to ensure that the important semantic objects retain their appearance, b) geometric-preserving loss to constrain simple scale transform of the important meshes, and c) boundary loss to enforce a clean rectangular output. Notably, our self-supervised paradigm eliminates the need for manually annotated retargeting datasets by deriving supervision directly from the input's geometric and semantic properties. Extensive evaluations on the RetargetMe benchmark demonstrate that our Object-IR achieves state-of-the-art performance, outperforming existing methods in quantitative metrics and subjective visual quality assessments. The framework efficiently processes arbitrary input resolutions (average inference time: 0.009s for 1024x683 resolution) while maintaining real-time performance on consumer-grade GPUs. The source code will soon be available at https://github.com/tlliao/Object-IR.
title Object-IR: Leveraging Object Consistency and Mesh Deformation for Self-Supervised Image Retargeting
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.27236