About

Linux Embedded Development & Signal Processing.
I received the B.S. degree in automation from Guangdong University of Technology, China, in Jul.2024. I currently pursuing the M.S. degree in automatic control with the School of Automation Engineering, University of Electronic Science and Technology of China,Chengdu. My research interests include signal processing and machine learning.
- City: GuangZhou, China
- Email: senhua.zh@std.uestc.edu.cn
- Institution: University of Electronic Science and Technology of China
Research Interests
My research interests include embedded linux development,signal processing and machine learning
.
Feel free to reach out to me!
Skills
Embedded Linux Development:
- Familiar with C language, C++ development, with good code writing habits;
- Familiar with the development and debugging of ARM-based embedded software, familiar with the use of compilation tools and debugging tools;
- Familiar with Linux embedded operating system migration, tailoring, driver development and application development.
Deep Learning & Signal Processing:
- Understand the classical algorithms related to deep learning, and understand the common filter processing algorithms (human signals);
- Have a certain deep learning theoretical foundation and mathematical statistics foundation, with independent algorithm design, implementation, analysis and optimization ability;
- Master Python/Matlab language and development environment, have good code ability, familiar with Pytorch open source deep learning framework.
Biography
Education
B.S. ,Automation
Sep 2020 - Jul 2024
Guangdong University of Technology (GDUT), Guangzhou, China
Award:
- The First Prize Scholarship in GDUT (Top 3%);
- Contemporary Undergraduate Mathematical Contest in Modeling 2021 (Guangdong), Second Prize
- National Undergraduate Electronics Design Contest 2022 (Guangdong) , First Prize
- Mathematical Contest in Modeling 2022, Honorable Mention
- China Undergraduate Computer Design Competition 2023 (Guangdong) ,Second Prize
- Scholarship for Outstanding Student Leaders;
M.S. ,Automation
Sep 2024 - Jul 2027(Expected)
University of Electronic Science and Technology of China, Chengdu, China
Professional Experience
Electrocardiograph development(Software Engineer)
Jul 2021 - May 2022
Institute of Intelligent Information Processing, Guangzhou, China
- Complete driver development and deployment
- Full-stack devlopment
- Neural network deployment
Non-contact vital signs monitor(Software Engineer)
Feb 2022 - Jan 2023
Institute of Intelligent Information Processing, Guangzhou, China
- Radar signal processing, Filter design, Digital signal processing.
- Linux system porting, Kernel tailoring, File system customization.
- Full-stack devlopment
Intern Experience
HITACHI(Software Engineer)
Jan 2024 - Jun 2024
Industrial Technology Research Department, Guangzhou, China
- Camera interface development
- Modobus, CAN, I2C interface development
- C++ software architecture development
Selected Research

Regional Perceptrons Ensemble for Permanent Magnetic Localization
Background: Permanent magnetic localization (PML) offers a low-cost and convenient approach to wireless motion tracking. Recent neural network methods have successfully improved the practicality of PML in real-world applications. However, the neural networks are prone to overfitting because ambient noise often influences the magnetic measurements, which are highly sensitive to the magnetic tracer's location. Method: To address this problem, we propose a spatial-angular ensemble (SAE) of regional perceptrons for PML. Firstly, the SAE constructs sub-region localization (SRL) modules to estimate the tracer's state in various spatial and angular regions. Secondly, it equips the spatial-aware (SA) and angular-aware (AA) modules with the ability to select the estimates from the SRL modules. Lastly, we design an attentional feature fusion (AFF) module to dynamically integrate these localization results. The SRL, SA, and AA modules are implemented by stacking the gated multi-layer perceptrons (gMLPs), which can adaptively suppress the noisy features. Furthermore, we present a linear interpolation strategy to impose local smooth regularization during neural network training, thereby enhancing the model's generalization performance. Result: Based on the assessments of our experiment system, the proposed SAE with linear interpolation significantly outperforms the current approaches in terms of magnetic location accuracy, and its computing cost satisfies the requirements for real-time processing. Conclusion: This paper provides a feasible neural network method to reduce the impact of noises and regional differences in magnetic measurements, potentially improving the accuracy of PML.
Related Publications:
Competitions
Ordering and Transportation of Raw Materials for Manufacturing Enterprises:
- Contemporary Undergraduate Mathematical Contest in Modeling 2021
- Implemented comprehensive evaluation, Linear programming algorithm
- Got Guangdong 2nd Prize
Composition analysis and identification of ancient glass products :
- Contemporary Undergraduate Mathematical Contest in Modeling 2022
- Implemented comprehensive evaluation, Programming to implement decision tree algorithm, clustering algorithm, sensitivity analysis.
- Got Guangdong 2nd Prize
Maximizing forest benefits:
- Mathematical Contest in Modeling 2022;
- Implemented principal component analysis, neural network prediction, sensitivity analysis.
- Got Honorable Prize
National Undergraduate Electronics Design Contest 2022:
- Participate in hardware circuit debugging, Responsible for Linux system construction and file system tailoring.;
- Responsible for the development of data communication protocols, real-time signal processing, human-computer interface design
- Got First Prize(Guangdong)