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백성준 연구실
전남대학교 지능전자컴퓨터공학과
백성준 교수
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연구 분야
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백성준 연구실

전남대학교 지능전자컴퓨터공학과 백성준 교수

본 연구실은 디지털 신호처리를 기반으로 라만 분광 데이터의 전처리·베이스라인 보정·스펙트럼 식별 기술을 개발하며, 최근에는 딥러닝과 패턴인식 기법을 접목해 분광 분석의 자동화와 정확도 향상을 추구하고 있고, 나아가 IoT, 스마트시티, 미래자동차, 디지털트윈, 안전관리 등 다양한 응용 분야로 연구를 확장하는 인공지능 융합형 신호처리 연구를 수행하고 있다.

대표 연구 분야
연구 영역 전체보기
라만 분광 신호처리와 베이스라인 보정 thumbnail
라만 분광 신호처리와 베이스라인 보정
주요 논문
5
논문 전체보기
1
article
|
인용수 5
·
2025
Baseline correction of Raman spectral data using triangular deep convolutional networks
Tiejun Chen, YoungJae Son, Changqing Dong, Sung‐June Baek
IF 3.3
The Analyst
Raman spectroscopy requires baseline correction to address fluorescence- and instrumentation-related distortions. The existing baseline correction methods can be broadly classified into traditional mathematical approaches and deep learning-based techniques. While traditional methods often require manual parameter tuning for different spectral datasets, deep learning methods offer greater adaptability and enhance automation. Recent research on deep learning-based baseline correction has primarily focused on optimizing existing methods or designing new network architectures to improve correction performance. This study proposes a novel deep learning network architecture to further enhance baseline correction effectiveness, building upon prior research. Experimental results demonstrate that the proposed method outperforms existing approaches by achieving superior correction accuracy, reducing computation time, and more effectively preserving peak intensity and shape.
https://doi.org/10.1039/d5an00253b
Baseline (sea)
Computer science
Raman spectroscopy
Artificial intelligence
Pattern recognition (psychology)
Geology
Physics
Optics
Oceanography
2
article
|
gold
·
인용수 10
·
2023
Library-Based Raman Spectral Identification Using Multi-Input Hybrid ResNet
Tiejun Chen, Sung‐June Baek
IF 4.3
ACS Omega
Raman spectroscopy is widely used for its exceptional identification capabilities in various fields. Traditional methods for target identification using Raman spectroscopy rely on signal correlation with moving windows, requiring data preprocessing that can significantly impact identification performance. In recent years, deep-learning approaches have been proposed to leverage data augmentation techniques, such as baseline and additive noise addition, in order to overcome data scarcity. However, these deep-learning methods are limited to the spectra encountered during training and struggle to handle unseen spectra. To address these limitations, we propose a multi-input hybrid deep-learning model trained with simulated spectral data. By employing simulated spectra, our method tackles the challenges of data scarcity and the handling of unseen spectra encountered in traditional and deep-learning methods. Experimental results demonstrate that our proposed method achieves outstanding identification performance and effectively handles spectra obtained from different Raman spectroscopy systems.
https://doi.org/10.1021/acsomega.3c05780
Preprocessor
Artificial intelligence
Computer science
Leverage (statistics)
Deep learning
Raman spectroscopy
Identification (biology)
Data pre-processing
Pattern recognition (psychology)
Machine learning
3
article
|
인용수 43
·
2022
Baseline correction using a deep-learning model combining ResNet and UNet
Tiejun Chen, YoungJae Son, Aaron Park, Sung‐June Baek
IF 3.3
The Analyst
Most spectral data, such as those obtained <i>via</i> infrared, Raman, and mass spectroscopy, have baseline drifts due to fluorescence or other reasons, which have an adverse impact on subsequent analyses. Therefore, several researchers have proposed the use of various baseline-correction methods to address the aforementioned issue. However, most baseline-correction methods require manual adjustment of the parameters to achieve desirable performance. In this study, we propose a baseline-correction method based on a deep-learning model that combines ResNet and UNet. The method uses a deep-learning model trained with simulated spectral data to perform baseline corrections and eliminates the need for manual parameter adjustments. Based on the results of the qualitative and quantitative analyses of the simulated spectral data and actual Raman spectra, the proposed method is easier to apply and has better performance compared to the existing methods. As the proposed method can be applied to Raman spectra and other spectra, it is expected to be widely used.
https://doi.org/10.1039/d2an00868h
Baseline (sea)
Computer science
Raman spectroscopy
Artificial intelligence
Deep learning
Pattern recognition (psychology)
Machine learning
Optics
Physics
정부 과제
43
과제 전체보기
1
2024년 6월-2031년 12월
|2,334,000,000
지역지능화혁신인재양성(경남대학교)
1. 비전 : AI+Data-Driven Engineering(ADD) 기반 경남주력산업 디지털대전환 선도 및 신성장산업 육성 2. 목표가. AI+Data-Driven Engineering 기반 경남주력산업 디지털대전환을 주도할 연구개발나. 산업수요 맞춯명 AI/SW 융합형 인재 양성 다. 신성장산업 육성을 위한 지역 산업 혁신 생태계 구축
디지털전환
빅데이터
인공지능
데이터 기반 제조공학
AI/SW융합
2
2024년 6월-2031년 12월
|1,200,000,000
지역지능화혁신인재양성(경남대학교)
1. 비전 : AI+Data-Driven Engineering(ADD) 기반 경남주력산업 디지털대전환 선도 및 신성장산업 육성 2. 목표가. AI+Data-Driven Engineering 기반 경남주력산업 디지털대전환을 주도할 연구개발나. 산업수요 맞춯명 AI/SW 융합형 인재 양성 다. 신성장산업 육성을 위한 지역 산업 혁신 생태계 구축
디지털전환
빅데이터
인공지능
데이터 기반 제조공학
AI/SW융합
3
2024년 6월-2031년 12월
|2,334,000,000
지역지능화혁신인재양성(경남대학교)
1. 비전 : AI+Data-Driven Engineering(ADD) 기반 경남주력산업 디지털대전환 선도 및 신성장산업 육성 2. 목표가. AI+Data-Driven Engineering 기반 경남주력산업 디지털대전환을 주도할 연구개발나. 산업수요 맞춯명 AI/SW 융합형 인재 양성 다. 신성장산업 육성을 위한 지역 산업 혁신 생태계 구축
디지털전환
빅데이터
인공지능
데이터 기반 제조공학
AI/SW융합
최신 특허
특허 전체보기
상태출원연도과제명출원번호상세정보
소멸2007필름막을 이용한 광학적 시료 측정 오차 감소 방법1020070007813
전체 특허

필름막을 이용한 광학적 시료 측정 오차 감소 방법

상태
소멸
출원연도
2007
출원번호
1020070007813