Liu XinCi, Zhao Chang
School of Food Engineering, Harbin University of Commerce, Harbin 150028, China.
School of Food Engineering, Heilongjiang Vocational College for Nationalities, Harbin 150066, China.
Comput Intell Neurosci. 2022 Mar 26;2022:1266332. doi: 10.1155/2022/1266332. eCollection 2022.
With the rapid development of the computer field in recent years, a series of major breakthroughs have been made in the field of computer vision. The key technologies in image feature recognition, face recognition, image understanding, pattern recognition, and machine learning have been rapidly applied and developed. The research and application of this field provide efficient and convenient means. However, for traditional physical and chemical experimental research, parameter adjustment is time-consuming and costly. In response to the phenomenon, this article starts with the study of the characteristics of the egg white protein thermal gelation image and explores the extraction of external features presented by the optimal parameters of the coagulation image under the thermal coagulation state of the egg white protein, based on the classic PCA and ICA-image feature extraction algorithm and its improved algorithm, respectively. Experiment and simulation research on several image feature extraction algorithms under different egg white solidification states are carried out, and the efficient recognition method and accuracy of the image under the optimal egg white protein thermal gelation state are discussed. It has important reference significance for the research of optimal image feature extraction in the future high-efficiency experimental research.
近年来,随着计算机领域的快速发展,计算机视觉领域取得了一系列重大突破。图像特征识别、人脸识别、图像理解、模式识别和机器学习等关键技术得到了迅速应用和发展。该领域的研究与应用提供了高效便捷的手段。然而,对于传统的物理化学实验研究,参数调整既耗时又成本高昂。针对这一现象,本文从蛋清蛋白热凝胶图像的特征研究入手,分别基于经典的主成分分析(PCA)和独立成分分析(ICA)图像特征提取算法及其改进算法,探索蛋清蛋白热凝固状态下凝固图像最优参数所呈现的外部特征提取。对不同蛋清凝固状态下的几种图像特征提取算法进行了实验和仿真研究,并讨论了最优蛋清蛋白热凝胶状态下图像的高效识别方法和准确率。这对于未来高效实验研究中的最优图像特征提取研究具有重要的参考意义。