Search Results for author: Yong Peng

Found 9 papers, 5 papers with code

VQ-NeRV: A Vector Quantized Neural Representation for Videos

1 code implementation19 Mar 2024 Yunjie Xu, Xiang Feng, Feiwei Qin, Ruiquan Ge, Yong Peng, Changmiao Wang

This block incorporates a codebook mechanism to discretize the network's shallow residual features and inter-frame residual information effectively.

Denoising regression +2

LKFormer: Large Kernel Transformer for Infrared Image Super-Resolution

1 code implementation22 Jan 2024 Feiwei Qin, Kang Yan, Changmiao Wang, Ruiquan Ge, Yong Peng, Kai Zhang

Given the broad application of infrared technology across diverse fields, there is an increasing emphasis on investigating super-resolution techniques for infrared images within the realm of deep learning.

Image Super-Resolution Infrared image super-resolution

Accurate Leukocyte Detection Based on Deformable-DETR and Multi-Level Feature Fusion for Aiding Diagnosis of Blood Diseases

1 code implementation1 Jan 2024 Yifei Chen, Chenyan Zhang, Ben Chen, Yiyu Huang, Yifei Sun, Changmiao Wang, Xianjun Fu, Yuxing Dai, Feiwei Qin, Yong Peng, Yu Gao

To address these issues, this paper proposes an innovative method of leukocyte detection: the Multi-level Feature Fusion and Deformable Self-attention DETR (MFDS-DETR).

AEGIS-Net: Attention-guided Multi-Level Feature Aggregation for Indoor Place Recognition

1 code implementation15 Dec 2023 Yuhang Ming, Jian Ma, Xingrui Yang, Weichen Dai, Yong Peng, Wanzeng Kong

We evaluate our AEGIS-Net on the ScanNetPR dataset and compare its performance with a pre-deep-learning feature-based method and five state-of-the-art deep-learning-based methods.

Semantic Segmentation

Deep Model Fusion: A Survey

no code implementations27 Sep 2023 Weishi Li, Yong Peng, Miao Zhang, Liang Ding, Han Hu, Li Shen

Specifically, we categorize existing deep model fusion methods as four-fold: (1) "Mode connectivity", which connects the solutions in weight space via a path of non-increasing loss, in order to obtain better initialization for model fusion; (2) "Alignment" matches units between neural networks to create better conditions for fusion; (3) "Weight average", a classical model fusion method, averages the weights of multiple models to obtain more accurate results closer to the optimal solution; (4) "Ensemble learning" combines the outputs of diverse models, which is a foundational technique for improving the accuracy and robustness of the final model.

Ensemble Learning

FedHiSyn: A Hierarchical Synchronous Federated Learning Framework for Resource and Data Heterogeneity

no code implementations21 Jun 2022 Guanghao Li, Yue Hu, Miao Zhang, Ji Liu, Quanjun Yin, Yong Peng, Dejing Dou

As the efficiency of training in the ring topology prefers devices with homogeneous resources, the classification based on the computing capacity mitigates the impact of straggler effects.

Federated Learning

Recurrent Neural Network from Adder's Perspective: Carry-lookahead RNN

1 code implementation22 Jun 2021 Haowei Jiang, Feiwei Qin, Jin Cao, Yong Peng, Yanli Shao

The recurrent network architecture is a widely used model in sequence modeling, but its serial dependency hinders the computation parallelization, which makes the operation inefficient.

Cascade Attentive Dropout for Weakly Supervised Object Detection

no code implementations20 Nov 2020 Wenlong Gao, Ying Chen, Yong Peng

Weakly supervised object detection (WSOD) aims to classify and locate objects with only image-level supervision.

Multiple Instance Learning Object +2

Image-based reconstruction for the impact problems by using DPNNs

no code implementations8 Apr 2019 Yu Li, Hu Wang, Wenquan Shuai, Honghao Zhang, Yong Peng

Therefore, in this study, an improved ReConNN method is proposed to address the mentioned weaknesses.

Generative Adversarial Network

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