Zhang Chenhao

I am a PhD student in the Visual Media Computing Lab (VMCL) within the School of Computer Science at Beijing Institute of Technology. Under the supervision of Professor Zhang Lei, my research focuses on advancing techniques in 3D vision and its applications.

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Research

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CrossView-GS: Gaussian Splatting for Cross-view Scene Reconstruction


Chenhao Zhang, Yuanping Cao, Lei Zhang
Computational Visual Media Journal, 2025
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This work presents a Gaussian Splatting method for cross-view scene reconstruction. By employing multi-branch construction with gradient-aware regularization and Gaussian supplementation, CrossView-GS effectively handles large view variations and achieves superior performance over state-of-the-art methods.

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Voxel-Mesh Hybrid Representation for Real-Time View Synthesis


Chenhao Zhang, Yongyang Zhou, Lei Zhang
IEEE Transactions on Visualization and Computer Graphics, 2024
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The Vosh framework introduces a hybrid representation that combines voxel and mesh components to achieve a flexible balance between rendering quality and speed, enabling real-time performance on mobile devices while maintaining high-quality rendering in complex regions.

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DHNet: Salient Object Detection With Dynamic Scale-Aware Learning and Hard-Sample Refinement


Chenhao Zhang, Shanshan Gao, Deqian Mao, Yuanfeng Zhou
IEEE Transactions on Circuits and Systems for Video Technology, 2022
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This work introduces a dynamic scale-aware learning approach and a dense sampling strategy with graph-based feature aggregation to enhance salient object detection, effectively addressing issues in object positioning and hard-sample handling, and achieving superior performance on five benchmark datasets.

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Coarse to Fine: Weak Feature Boosting Network for Salient Object Detection


Chenhao Zhang, Shanshan Gao, Xiao Pan, Yuting Wang, Yuanfeng Zhou
Computer Graphics Forum (Pacific Graphics), 2020
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This paper introduces a novel Weak Feature Boosting Network (WFBNet) for salient object detection, which enhances low-confidence regions to improve detection accuracy, particularly in complex backgrounds or with small salient objects, achieving superior performance on five benchmark datasets without post-processing.








Design and source code from Jon Barron's website