pattern recognition

模式识别
  • 文章类型: Journal Article
    生物信息学的一个扩展领域是通过对生物医学特征进行分类的医学诊断。通过机器学习(ML)方法来提高诊断能力的自动医疗策略具有挑战性。他们需要对其性能进行正式检查,以确定增强ML方法的最佳条件。这项工作提出了基于多种自动调整监督机器学习技术的VotingandStacking(VC和SC)集成策略的变体,以提高传统基线分类器自动诊断脊柱骨科疾病的功效。集成策略是通过首先组合一组完整的基于不同过程的自动调谐基线分类器来创建的,如几何,概率,逻辑,和优化。接下来,三个最有前途的分类器在k-最近邻居(kNN)中选择,朴素贝叶斯(NB),逻辑回归(LR),线性判别分析(LDA),二次判别分析(QDA),支持向量机(SVM)人工神经网络(ANN),决策树(DT)。网格搜索K-Fold交叉验证策略用于自动调整基线分类器超参数。所提出的集成策略的性能独立地与自动调谐的基线分类器进行比较。简洁的分析评估准确性,精度,召回,F1分数,和ROC-ACU指标。分析还检查了错误分类的疾病元素,以找到针对此特定医学问题的最可靠和最不可靠的分类器。结果表明,VC集成策略提供了与最佳基线分类器(kNN)相当的改进。同时,当所有基线分类器都包含在SC集成中时,该策略在所有评估指标中超过95%,突出作为分类脊柱疾病的最合适的选择。
    One expanding area of bioinformatics is medical diagnosis through the categorization of biomedical characteristics. Automatic medical strategies to boost the diagnostic through machine learning (ML) methods are challenging. They require a formal examination of their performance to identify the best conditions that enhance the ML method. This work proposes variants of the Voting and Stacking (VC and SC) ensemble strategies based on diverse auto-tuning supervised machine learning techniques to increase the efficacy of traditional baseline classifiers for the automatic diagnosis of vertebral column orthopedic illnesses. The ensemble strategies are created by first combining a complete set of auto-tuned baseline classifiers based on different processes, such as geometric, probabilistic, logic, and optimization. Next, the three most promising classifiers are selected among k-Nearest Neighbors (kNN), Naïve Bayes (NB), Logistic Regression (LR), Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA), Support Vector Machine (SVM), Artificial Neural Networks (ANN), and Decision Tree (DT). The grid-search K-Fold cross-validation strategy is applied to auto-tune the baseline classifier hyperparameters. The performances of the proposed ensemble strategies are independently compared with the auto-tuned baseline classifiers. A concise analysis evaluates accuracy, precision, recall, F1-score, and ROC-ACU metrics. The analysis also examines the misclassified disease elements to find the most and least reliable classifiers for this specific medical problem. The results show that the VC ensemble strategy provides an improvement comparable to that of the best baseline classifier (the kNN). Meanwhile, when all baseline classifiers are included in the SC ensemble, this strategy surpasses 95% in all the evaluated metrics, standing out as the most suitable option for classifying vertebral column diseases.
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  • 文章类型: Journal Article
    分段白酒的鉴别有助于稳定产品质量,提高创收效应。基于Tb@镧金属有机骨架(Tb@La-MOF)的四个荧光特征峰,构建了荧光传感器阵列。它的荧光信号被特异性猝灭,当Tb@La-MOF遇到乙醛时。乙醛可以抑制MOF中有机配体对能量的吸收,或/和与有机配体上的-COOH氢键合,导致能量转移到Tb(Ⅲ)。据此,乙醛的定量检测在10-300μM的范围内完成,检测极限为5.5μM。同时,已成功应用于分段白酒的判别。通过传感器阵列和分析方法的组合处理,可以100%区分三个酒窖中的15个。准确性,简单,低成本是这种荧光传感器阵列的亮点,在检测中具有相当大的应用潜力,生产,和食品领域。
    Discrimination of segmented Baijiu contributes to stabilizing the quality of products, improving revenue-generating effects. A fluorescence sensor array is constructed based on four fluorescence characteristic peaks of terbium@lanthanum metal-organic framework (Tb@La-MOF). Its fluorescence signal is specifically quenched, when Tb@La-MOF encounters acetaldehyde. Acetaldehyde may inhibit the absorption of energy by the organic ligands in MOF, or/and hydrogen bonding with -COOH on the organic ligand, resulting in energy transfer to Tb(Ⅲ). According to this, the quantitative detection of acetaldehyde is completed with a range of 10-300 μM and the detection limit of 5.5 μM. At the same time, it has been successfully applied to the discrimination of segmented Baijiu. Fifteen segmented from three wine cellars are 100 % discriminated with the combined processing of sensor arrays and analytical methods. Accuracy, simplicity, and low-cost are highlights of this fluorescence sensor array, which has considerable potential for application in detection, production, and food field.
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  • 文章类型: Journal Article
    听力障碍人群缺乏有效的早期手语学习框架可能会造成创伤性后果,在工作场所造成社会孤立和不公平待遇。字母和数字检测方法一直是早期手语学习的基本框架,但受到性能和准确性的限制。很难在现实生活中发现迹象。本文提出了一种基于YouOnlyLookOnce8.0(YOLOv8)算法的早期手语学习者的改进手语检测方法,称为智能手语检测系统(iSDS),它利用深度学习的力量来检测手语的独特特征。iSDS方法可以克服假阳性率,提高手语检测的准确性和速度。针对早期手语学习者提出的iSDS框架包括三个基本步骤:(i)图像像素处理,以提取在框架中表现不足的特征,(ii)使用YOLOv8的相互依赖的基于像素的特征提取,(iii)基于网络的签名者独立性验证。所提出的iSDS可实现更快的响应时间,并减少错误解释和推理延迟时间。iSDS的精度达到了超过97%的最先进的性能,召回,和F1得分,最佳mAP为87%。提出的iSDS方法有几个潜在的应用,包括连续手语检测系统和基于网络的智能手语识别系统。
    Lack of an effective early sign language learning framework for a hard-of-hearing population can have traumatic consequences, causing social isolation and unfair treatment in workplaces. Alphabet and digit detection methods have been the basic framework for early sign language learning but are restricted by performance and accuracy, making it difficult to detect signs in real life. This article proposes an improved sign language detection method for early sign language learners based on the You Only Look Once version 8.0 (YOLOv8) algorithm, referred to as the intelligent sign language detection system (iSDS), which exploits the power of deep learning to detect sign language-distinct features. The iSDS method could overcome the false positive rates and improve the accuracy as well as the speed of sign language detection. The proposed iSDS framework for early sign language learners consists of three basic steps: (i) image pixel processing to extract features that are underrepresented in the frame, (ii) inter-dependence pixel-based feature extraction using YOLOv8, (iii) web-based signer independence validation. The proposed iSDS enables faster response times and reduces misinterpretation and inference delay time. The iSDS achieved state-of-the-art performance of over 97% for precision, recall, and F1-score with the best mAP of 87%. The proposed iSDS method has several potential applications, including continuous sign language detection systems and intelligent web-based sign recognition systems.
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  • 文章类型: Journal Article
    在智能家居中,专注于人类活动识别(HAR)的应用已经复苏,特别是在环境智能和辅助生活技术领域。然而,这些应用对在现实世界中运行的任何自动分析系统提出了许多重大挑战,比如可变性,稀疏,和传感器测量中的噪声。尽管最先进的HAR系统在应对其中一些挑战方面取得了长足的进步,它们受到实际限制:它们需要在自动识别之前对连续传感器数据流进行成功的预分割,即,他们假设在部署期间存在oracle,并且它能够识别跨离散传感器事件的感兴趣的时间窗口。为了克服这个限制,我们提出了一种新颖的图引导神经网络方法,通过学习传感器之间的显式共燃关系来执行活动识别。我们通过以数据驱动的方式学习表示智能家居中传感器网络的更具表现力的图结构来实现这一目标。我们的方法通过应用注意力机制和节点嵌入的分层池化将离散输入传感器测量映射到特征空间。我们通过在CASAS数据集上进行几个实验来证明我们提出的方法的有效性,这表明所得到的图引导神经网络在多个数据集上比智能家居中HAR的最先进方法更胜一筹。这些结果是有希望的,因为它们推动智能家居的HAR更接近现实世界的应用。
    There has been a resurgence of applications focused on human activity recognition (HAR) in smart homes, especially in the field of ambient intelligence and assisted-living technologies. However, such applications present numerous significant challenges to any automated analysis system operating in the real world, such as variability, sparsity, and noise in sensor measurements. Although state-of-the-art HAR systems have made considerable strides in addressing some of these challenges, they suffer from a practical limitation: they require successful pre-segmentation of continuous sensor data streams prior to automated recognition, i.e., they assume that an oracle is present during deployment, and that it is capable of identifying time windows of interest across discrete sensor events. To overcome this limitation, we propose a novel graph-guided neural network approach that performs activity recognition by learning explicit co-firing relationships between sensors. We accomplish this by learning a more expressive graph structure representing the sensor network in a smart home in a data-driven manner. Our approach maps discrete input sensor measurements to a feature space through the application of attention mechanisms and hierarchical pooling of node embeddings. We demonstrate the effectiveness of our proposed approach by conducting several experiments on CASAS datasets, showing that the resulting graph-guided neural network outperforms the state-of-the-art method for HAR in smart homes across multiple datasets and by large margins. These results are promising because they push HAR for smart homes closer to real-world applications.
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  • 文章类型: Journal Article
    本研究引入了一种创新的运输方式分类算法。它对步行等模式进行分类,骑自行车,电车,公共汽车,出租车,和私人车辆基于通过嵌入在智能手机中的传感器收集的数据。数据包括日期,时间,纬度,经度,高度,和速度,使用专门为此项目设计的移动应用程序收集。这些数据是通过智能手机的GPS收集的,以提高分析的准确性。每种运输方式的停止时间,以及行驶的距离和平均速度,进行分析,以识别模式和独特的特征。在昆卡进行,厄瓜多尔,该研究旨在开发和验证一种增强城市规划的算法。它从移动模式中提取重要特征,包括速度,加速度,和过度加速,并应用纵向动力学来训练分类模型。分类算法依赖于决策树模型,在验证和测试中达到94.6%的高精度,证明了所提出方法的有效性。此外,精度指标0.8938表示模型做出正确正预测的能力,近90%的阳性病例被正确识别。此外,0.83084的召回指标突出了模型识别数据集中真正积极实例的能力,捕获超过80%的积极实例。计算出的F1分数为0.86117,表明准确率和召回率之间达到了和谐的平衡,展示了模型在有效分类运输方式方面的稳健和全面的性能。该研究讨论了该方法在城市规划中的潜在应用,运输管理,公共交通路线优化,和城市交通监控。这项研究代表了生成起点-目的地(OD)矩阵的初步阶段,以更好地了解人们如何在城市中移动。
    This study introduces an innovative algorithm for classifying transportation modes. It categorizes modes such as walking, biking, tram, bus, taxi, and private vehicles based on data collected through sensors embedded in smartphones. The data include date, time, latitude, longitude, altitude, and speed, gathered using a mobile application specifically designed for this project. These data were collected through the smartphone\'s GPS to enhance the accuracy of the analysis. The stopping times of each transport mode, as well as the distance traveled and average speed, are analyzed to identify patterns and distinctive features. Conducted in Cuenca, Ecuador, the study aims to develop and validate an algorithm to enhance urban planning. It extracts significant features from mobility patterns, including speed, acceleration, and over-acceleration, and applies longitudinal dynamics to train the classification model. The classification algorithm relies on a decision tree model, achieving a high accuracy of 94.6% in validation and 94.9% in testing, demonstrating the effectiveness of the proposed approach. Additionally, the precision metric of 0.8938 signifies the model\'s ability to make correct positive predictions, with nearly 90% of positive instances correctly identified. Furthermore, the recall metric at 0.83084 highlights the model\'s capability to identify real positive instances within the dataset, capturing over 80% of positive instances. The calculated F1-score of 0.86117 indicates a harmonious balance between precision and recall, showcasing the models robust and well-rounded performance in classifying transport modes effectively. The study discusses the potential applications of this method in urban planning, transport management, public transport route optimization, and urban traffic monitoring. This research represents a preliminary stage in generating an origin-destination (OD) matrix to better understand how people move within the city.
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  • 文章类型: Journal Article
    计算机视觉属于人工智能的广阔保护伞,它模仿人类视觉,在牙科成像中起着至关重要的作用。牙科从业者可视化和解释牙齿,和牙齿周围的结构,并通过手动检查各种牙科成像方式来检测异常。由于理解医疗数据的复杂性和认知难度,人为错误使正确诊断变得困难。自动诊断可能有助于缓解延误,加快从业者对阳性案例的解释,减轻他们的工作量。几种医学成像方式,如X射线,CT扫描,彩色图像,等。在这项调查中简要描述了牙科中的应用。牙医在几个专业中使用牙科成像作为诊断工具,包括正畸,牙髓,牙周病,等。在牙科学科中,计算机视觉已经从经典的图像处理发展到具有数学方法和强大的深度学习技术的机器学习。在这里,传统的图像处理技术以及与智能机器学习算法的结合,和复杂的架构牙科射线照片分析采用深度学习技术。这项研究提供了几个任务的详细总结,包括解剖分割,identification,不同牙齿异常的分类及其不足,以及该领域的未来前景。
    Computer vision falls under the broad umbrella of artificial intelligence that mimics human vision and plays a vital role in dental imaging. Dental practitioners visualize and interpret teeth, and the structure surrounding the teeth and detect abnormalities by manually examining various dental imaging modalities. Due to the complexity and cognitive difficulty of comprehending medical data, human error makes correct diagnosis difficult. Automated diagnosis may be able to help alleviate delays, hasten practitioners\' interpretation of positive cases, and lighten their workload. Several medical imaging modalities like X-rays, CT scans, color images, etc. that are employed in dentistry are briefly described in this survey. Dentists employ dental imaging as a diagnostic tool in several specialties, including orthodontics, endodontics, periodontics, etc. In the discipline of dentistry, computer vision has progressed from classic image processing to machine learning with mathematical approaches and robust deep learning techniques. Here conventional image processing techniques solely as well as in conjunction with intelligent machine learning algorithms, and sophisticated architectures of dental radiograph analysis employ deep learning techniques. This study provides a detailed summary of several tasks, including anatomical segmentation, identification, and categorization of different dental anomalies with their shortfalls as well as future perspectives in this field.
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  • 文章类型: Journal Article
    铬(Cr)物种的高分辨率识别,特别是各种有机Cr配合物,以方便和经济可行的方式是实现铬废水深度处理的前提。为此,通过利用金纳米粒子(AuNP)与Cr物种相互作用时的紫外光谱位移,开发了比色纳米Au传感器阵列;特别是,四种分子改性剂[即,亚氨基二乙酸(IDA),三聚磷酸盐(TPP),十六烷基三甲基溴化铵(CTAB),和1,5-二苯基卡巴肼(DPC)]有意用于组装纳米Au阵列受体,通过形成配位对不同的Cr物种表现出各自的响应,疏水相互作用,静电吸引,和氧化还原反应,然后分别整合了独特光学特性的“指纹”差异,以通过模式识别技术半定量识别Cr物种。11种普遍存在的Cr物种[即,Cr(III),Cr(VI),和各种Cr(III)-有机络合物]作为模型样品,可以敏感地识别,无论在单独或混合模式下,通过开发的纳米Au传感器阵列,基于不同的纳米Au聚集行为产生的比色响应,在模拟或实际水场景中具有出色的抗干扰能力。有吸引力的,纳米Au传感器阵列可以快速原位实现Cr物种定量分析的非常灵敏的检测限,这通常需要对常规分析方法进行两步分离和检测。这种方便的Cr物种区分策略有助于合理设计用于铬废水深度处理的特定方案。
    High-resolution identification of chromium (Cr) species, especially various organic-Cr complexes, in a convenient and economically-feasible manner is the prerequisite for achieving the advanced treatment of chromium wastewater. To this end, a colorimetric nano-Au sensor array was developed by taking advantage of the UV-spectra shift of gold nanoparticles (Au NPs) upon interaction with Cr species; specifically, four molecular modifiers [i.e., iminodiacetic acid (IDA), tripolyphosphate (TPP), cetyltrimethylammonium bromide (CTAB), and 1,5-diphenylcarbazide (DPC)] were intentionally employed for assembling nano-Au array receptors, which showed respective responses toward different Cr species through the formation of coordination, hydrophobic interaction, electrostatic attraction, and redox reaction, respectively; the \"fingerprint\" differences of the unique optical properties were then integrated for semi-quantitatively recognizing Cr species by pattern recognition techniques. Eleven ubiquitous Cr species [i.e., Cr(III), Cr(VI), and various Cr(III)-organic complexes] served as the model samples, which could be sensitively identified, no matter in individual or mixture mode, by the developed nano-Au sensor array on the basis of the colorimetric responses resulted from diverse nano-Au-aggregation behaviors, with excellent anti-interference ability in the simulated or actual water scenario. Attractively, the nano-Au sensor array can achieve very sensitive detection limit of the quantitative analyses of Cr species in a prompt in-situ manner, which usually requires a two-step process of separation and detection for the conventional analytical methods. Such a convenient strategy of Cr species discrimination conduces to rationally designing specific protocols for the advanced treatment of chromium wastewater.
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  • 文章类型: Journal Article
    本文提出了一种新的识别方法,提取,并从二维图中处理相位分辨局部放电(PRPD)模式,以识别影响电气设备的特定缺陷类型,而无需人工干预,同时保留使PRPD分析成为有效诊断技术的原理。所提出的方法不依赖于训练复杂的深度学习算法,这些算法需要大量的计算资源和大量的数据集,这可能对在线局部放电监测的应用构成重大障碍。相反,所开发的余弦簇网(CCNet)模型,这是一个图像处理管道,在采用余弦相似性函数来测量图案与已知缺陷类型的预定义模板的相似性之前,可以从任何二维PRPD图中提取和处理图案。使用现有文献中可用的几种手动分类的PRPD图像测试了模型的PRPD模式识别能力。该模型一致地产生相似性得分,该相似性得分识别与来自手动分类的缺陷类型相同的缺陷类型。从CCNet模型的初始试验中成功的缺陷类型报告以及识别的速度,通常不超过四秒,表示实时应用的潜力。
    This paper proposes a new method for recognizing, extracting, and processing Phase-Resolved Partial Discharge (PRPD) patterns from two-dimensional plots to identify specific defect types affecting electrical equipment without human intervention while retaining the principals that make PRPD analysis an effective diagnostic technique. The proposed method does not rely on training complex deep learning algorithms which demand substantial computational resources and extensive datasets that can pose significant hurdles for the application of on-line partial discharge monitoring. Instead, the developed Cosine Cluster Net (CCNet) model, which is an image processing pipeline, can extract and process patterns from any two-dimensional PRPD plot before employing the cosine similarity function to measure the likeness of the patterns to predefined templates of known defect types. The PRPD pattern recognition capabilities of the model were tested using several manually classified PRPD images available in the existing literature. The model consistently produced similarity scores that identified the same defect type as the one from the manual classification. The successful defect type reporting from the initial trials of the CCNet model together with the speed of the identification, which typically does not exceed four seconds, indicates potential for real-time applications.
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  • 文章类型: Journal Article
    研究交联聚乙烯(XLPE)电缆局部放电中复杂缺陷类型的模式识别,并分析识别局部放电信号模式的有效性,这项研究采用了变分模式分解(VMD)算法和熵理论,如功率谱熵,模糊熵,和排列熵对复合绝缘缺陷局部放电信号进行特征提取。平均功率谱熵(PS),平均模糊熵(FU),平均排列熵(PE),以及IMF2和IMF13(Pe)的排列熵值被选择为与复合缺陷相关的四类局部放电信号的特征量。从每种复合缺陷的局部放电信号中选取600个样本,共2400个样品的四种类型的复合缺陷的组合。每个样本包含五个特征值,它们被编译成数据集。设计并训练了Snake优化算法-优化支持向量机(SO-SVM)模型,使用从电缆局部放电数据集中提取的特征作为识别电缆局部放电信号的案例示例。然后将SO-SVM模型的识别结果与常规学习模型的识别结果进行比较。结果表明,对于交联聚乙烯复合绝缘缺陷电缆的局部放电信号,SO-SVM模型比传统学习模型具有更好的识别效果。在识别精度方面,对于划痕和进水缺陷,SO-SVM比BP(反向传播)神经网络提高了14.00%,比GA-BP(遗传算法-反向传播)高出5.66%,比SVM(支持向量机)高出12.50%。对于涉及金属杂质和划痕的缺陷,SO-SVM比BP提高了13.39%,比GA-BP高出9.34%,和12.56%的SVM。对于有金属杂质和进水的缺陷,SO-SVM比BP增强了13.80%,比GA-BP高出9.47%,和13.97%的SVM。最后,对于结合金属杂质的缺陷,水进入,和划痕,SO-SVM寄存器比BP增加了11.90%,比GA-BP高出9.59%,比SVM高出12.05%。
    To investigate the pattern recognition of complex defect types in XLPE (cross-linked polyethylene) cable partial discharges and analyze the effectiveness of identifying partial discharge signal patterns, this study employs the variational mode decomposition (VMD) algorithm alongside entropy theories such as power spectrum entropy, fuzzy entropy, and permutation entropy for feature extraction from partial discharge signals of composite insulation defects. The mean power spectrum entropy (PS), mean fuzzy entropy (FU), mean permutation entropy (PE), as well as the permutation entropy values of IMF2 and IMF13 (Pe) are selected as the characteristic quantities for four categories of partial discharge signals associated with composite defects. Six hundred samples are selected from the partial discharge signals of each type of compound defect, amounting to a total of 2400 samples for the four types of compound defects combined. Each sample comprises five feature values, which are compiled into a dataset. A Snake Optimization Algorithm-optimized Support Vector Machine (SO-SVM) model is designed and trained, using the extracted features from cable partial discharge datasets as case examples for recognizing cable partial discharge signals. The identification outcomes from the SO-SVM model are then compared with those from conventional learning models. The results demonstrate that for partial discharge signals of XLPE cable composite insulation defects, the SO-SVM model yields better identification results than traditional learning models. In terms of recognition accuracy, for scratch and water ingress defects, SO-SVM improves by 14.00% over BP (Back Propagation) neural networks, by 5.66% over GA-BP (Genetic Algorithm-Back Propagation), and by 12.50% over SVM (support vector machine). For defects involving metal impurities and scratches, SO-SVM improves by 13.39% over BP, 9.34% over GA-BP, and 12.56% over SVM. For defects with metal impurities and water ingress, SO-SVM shows enhancements of 13.80% over BP, 9.47% over GA-BP, and 13.97% over SVM. Lastly, for defects combining metal impurities, water ingress, and scratches, SO-SVM registers increases of 11.90% over BP, 9.59% over GA-BP, and 12.05% over SVM.
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  • 文章类型: Journal Article
    微观结构和应力都会影响磁畴的结构和运动学性能。事实上,微观结构和应力变化经常共存。然而,在微观结构特征的评估中,很少考虑微观结构和磁畴应力的耦合。在这次调查中,磁增量磁导率(MIP)和磁Barkhausen噪声(MBN)技术用于研究特征微观结构和应力对磁畴可逆和不可逆运动的耦合效应,建立了微观结构与磁畴特性之间的定量关系。考虑到微观结构和应力对磁畴的耦合作用,创新性地提出了一种微结构和应力的模式化表征方法。基于多层感知器(MLP)模型,实现了微结构和应力的模式识别,准确率高于97%。结果表明,同时作为输入参数的磁畴特征和微磁特征的模式识别精度高于单独作为输入参数的微磁特征。
    Both microstructure and stress affect the structure and kinematic properties of magnetic domains. In fact, microstructural and stress variations often coexist. However, the coupling of microstructure and stress on magnetic domains is seldom considered in the evaluation of microstructural characteristics. In this investigation, Magnetic incremental permeability (MIP) and magnetic Barkhausen noise (MBN) techniques are used to study the coupling effect of characteristic microstructure and stress on the reversible and irreversible motions of magnetic domains, and the quantitative relationship between microstructure and magnetic domain characteristics is established. Considering the coupling effect of microstructure and stress on magnetic domains, a patterned characterization method of microstructure and stress is innovatively proposed. Pattern recognition based on the Multi-layer Perceptron (MLP) model is realized for microstructure and stress with an accuracy rate higher than 97%. The results show that the pattern recognition accuracy of magnetic domain features and micro-magnetic features simultaneously as input parameters is higher than that of micro-magnetic features alone as input parameters.
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