Search Results for author: Hongru Zhu

Found 6 papers, 5 papers with code

Unleashing the Potential of SAM for Medical Adaptation via Hierarchical Decoding

1 code implementation27 Mar 2024 Zhiheng Cheng, Qingyue Wei, Hongru Zhu, Yan Wang, Liangqiong Qu, Wei Shao, Yuyin Zhou

This paper introduces H-SAM: a prompt-free adaptation of SAM tailored for efficient fine-tuning of medical images via a two-stage hierarchical decoding procedure.

Image Segmentation Medical Image Segmentation +3

MicroDiffusion: Implicit Representation-Guided Diffusion for 3D Reconstruction from Limited 2D Microscopy Projections

1 code implementation16 Mar 2024 Mude Hui, Zihao Wei, Hongru Zhu, Fei Xia, Yuyin Zhou

This strategy enriches the diffusion process with structured 3D information, enhancing detail and reducing noise in localized 2D images.

3D Reconstruction Denoising

Revisiting Adversarial Training at Scale

1 code implementation9 Jan 2024 Zeyu Wang, Xianhang Li, Hongru Zhu, Cihang Xie

For example, by training on DataComp-1B dataset, our AdvXL empowers a vanilla ViT-g model to substantially surpass the previous records of $l_{\infty}$-, $l_{2}$-, and $l_{1}$-robust accuracy by margins of 11. 4%, 14. 2% and 12. 9%, respectively.

Rejuvenating image-GPT as Strong Visual Representation Learners

1 code implementation4 Dec 2023 Sucheng Ren, Zeyu Wang, Hongru Zhu, Junfei Xiao, Alan Yuille, Cihang Xie

This paper enhances image-GPT (iGPT), one of the pioneering works that introduce autoregressive pretraining to predict next pixels for visual representation learning.

Representation Learning

Improving EEG Decoding via Clustering-based Multi-task Feature Learning

no code implementations12 Dec 2020 Yu Zhang, Tao Zhou, Wei Wu, Hua Xie, Hongru Zhu, Guoxu Zhou, Andrzej Cichocki

With the encoded label matrix, we devise a novel multi-task learning algorithm by exploiting the subclass relationship to jointly optimize the EEG pattern features from the uncovered subclasses.

Brain Computer Interface Clustering +3

Robustness of Object Recognition under Extreme Occlusion in Humans and Computational Models

1 code implementation11 May 2019 Hongru Zhu, Peng Tang, Jeongho Park, Soojin Park, Alan Yuille

We test both humans and the above-mentioned computational models in a challenging task of object recognition under extreme occlusion, where target objects are heavily occluded by irrelevant real objects in real backgrounds.

Object Object Recognition

Cannot find the paper you are looking for? You can Submit a new open access paper.