Kumar Sachin, Veer Karan, Kumar Sanjeev
Department of Instrumentation and Control Engineering, DR BR Ambedkar National Institute of Technology, Jalandhar.
Biomedical Applications (BMA), Central Scientific Instruments Organization, Chandigarh.
Curr Med Imaging. 2023 Mar 9. doi: 10.2174/1573405619666230309103435.
Biomedical signal and image processing is the study of the dynamic behavior of various bio-signals, which benefits academics and research. Signal processing is used to assess the behavior of analogue and digital signals for the assessment, reconfiguration, improved efficiency, extraction of features, and reorganization of patterns. This paper unveils hidden characteristic information about input signals using feature extraction methods. The main feature extraction methods used in signal processing are based on studying time, frequency, and frequency domain. Feature exaction methods are used for data reduction, comparison, and reducing dimensions, producing the original signal with sufficient accuracy with a structure of an efficient and robust pattern for the classifier system. Therefore, an attempt has been made to study the various feature extraction methods, feature transformation methods, classifiers, and datasets for biomedical signals.
生物医学信号与图像处理是对各种生物信号动态行为的研究,这对学术界和研究工作有益。信号处理用于评估模拟和数字信号的行为,以进行评估、重新配置、提高效率、特征提取和模式重组。本文使用特征提取方法揭示输入信号的隐藏特征信息。信号处理中使用的主要特征提取方法基于对时间、频率和频域的研究。特征提取方法用于数据缩减、比较和降维,以足够的精度生成原始信号,并为分类器系统提供高效且稳健的模式结构。因此,已尝试研究生物医学信号的各种特征提取方法、特征变换方法、分类器和数据集。