Search Results for author: Yuning Huang

Found 6 papers, 4 papers with code

Automatic Recognition of Food Ingestion Environment from the AIM-2 Wearable Sensor

no code implementations13 May 2024 Yuning Huang, Mohamed Abul Hassan, Jiangpeng He, Janine Higgins, Megan McCrory, Heather Eicher-Miller, Graham Thomas, Edward O Sazonov, Fengqing Maggie Zhu

Experimental results on the collected dataset show that our proposed method for automatic ingestion environment recognition successfully addresses the challenging data imbalance problem in the dataset and achieves a promising overall classification accuracy of 96. 63%.

imbalanced classification Transfer Learning

Flexible Variable-Rate Image Feature Compression for Edge-Cloud Systems

2 code implementations30 Mar 2024 Md Adnan Faisal Hossain, Zhihao Duan, Yuning Huang, Fengqing Zhu

By compressing different intermediate features of a pre-trained vision task model, the proposed method can scale the encoding complexity without changing the overall size of the model.

Feature Compression

Theoretical Bound-Guided Hierarchical VAE for Neural Image Codecs

1 code implementation27 Mar 2024 Yichi Zhang, Zhihao Duan, Yuning Huang, Fengqing Zhu

Recent studies reveal a significant theoretical link between variational autoencoders (VAEs) and rate-distortion theory, notably in utilizing VAEs to estimate the theoretical upper bound of the information rate-distortion function of images.

Probing Image Compression For Class-Incremental Learning

no code implementations10 Mar 2024 Justin Yang, Zhihao Duan, Andrew Peng, Yuning Huang, Jiangpeng He, Fengqing Zhu

To this end, we introduce a new framework to incorporate image compression for continual ML including a pre-processing data compression step and an efficient compression rate/algorithm selection method.

Class Incremental Learning Data Compression +3

QARV: Quantization-Aware ResNet VAE for Lossy Image Compression

2 code implementations16 Feb 2023 Zhihao Duan, Ming Lu, Jack Ma, Yuning Huang, Zhan Ma, Fengqing Zhu

This paper addresses the problem of lossy image compression, a fundamental problem in image processing and information theory that is involved in many real-world applications.

Image Compression Quantization

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