Image Processing

图像处理
  • 文章类型: Journal Article
    公共安全是一个至关重要的问题,通常通过公共场所入口的安全检查来解决,让受过训练的人员或X射线扫描仪检测违禁物品。然而,很多地方,比如医院,学校,活动中心缺乏这样的资源,冒着安全漏洞的风险。即使使用X射线扫描仪或手动检查,漏洞可以被恶意意图的个人利用,带来重大安全隐患。此外,传统方法,依靠人工检查和常规图像处理技术,通常效率低下,容易出现高错误率。为了减轻这些风险,我们提出了一个实时检测模型-EnhanceNet,它使用集成到YOLOv4中的自定义扩展增强池网络(SEP-Net)。创新的SEP-Net增强了特征表示和定位精度,显著有助于模型在检测违禁物品方面的功效。我们注释了九个类的自定义数据集,并使用不同的输入大小(608和416)评估了我们的模型。608输入大小实现了74.10%的平均平均精度(mAP),检测速度为每秒22.3帧(FPS)。416输入大小显示出优越的性能,MAP为76.75%,检测速度为27.1FPS。这些证明了我们的模型是准确和有效的,使它们适合实时应用。
    Public safety is a critical concern, typically addressed through security checks at entrances of public places, involving trained officers or X-ray scanning machines to detect prohibited items. However, many places like hospitals, schools, and event centres lack such resources, risking security breaches. Even with X-ray scanners or manual checks, gaps can be exploited by individuals with malicious intent, posing significant security risks. Additionally, traditional methods, relying on manual inspections and conventional image processing techniques, are often inefficient and prone to high error rates. To mitigate these risks, we propose a real-time detection model - EnhanceNet using a customized Scale-Enhanced Pooling Network (SEP-Net) integrated into the YOLOv4. The innovative SEP-Net enhances feature representation and localization accuracy, significantly contributing to the model\'s efficacy in detecting prohibited items. We annotated a custom dataset of nine classes and evaluated our models using different input sizes (608 and 416). The 608 input size achieved a mean Average Precision (mAP) of 74.10% with a detection speed of 22.3 Frames per Second (FPS). The 416 input size showed superior performance, achieving a mAP of 76.75% and a detection speed of 27.1 FPS. These demonstrate that our models are accurate and efficient, making them suitable for real-time applications.
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  • 文章类型: Journal Article
    背景:在临床前培训期间,牙科学生拍摄包含拔除患者牙齿的丙烯酸(塑料)块的X射线照片。随着医疗记录的数字化,创建了一个中央归档系统来存储和检索所有X射线图像,不管它们是否是丙烯酸块上牙齿的图像,或者来自病人的。在数字化进程的早期阶段,由于数据管理系统的不成熟,许多图像被混合在一起,并存储在一个统一的归档系统中的随机位置,包括病人记录文件.过滤并清除不期望的训练图像是必要的,因为手动搜索这样的图像是有问题的。因此,此技巧的目的是将口内图像与丙烯酸块上的人工图像区分开。
    方法:本研究采用了一种人工智能(AI)解决方案,可以自动区分患者的口腔X光片和丙烯酸块的口腔X光片。迁移学习的概念被应用于牙科医院提供的数据集。
    结果:准确性评分,F1得分,召回得分为98.8%,99.2%,100%,分别,是使用VGG16预训练模型实现的。与最初使用96.5%的基线模型获得的结果相比,这些结果更敏感,97.5%,和98.9%的准确率,F1得分,和召回得分分别。
    结论:所提出的使用迁移学习的系统能够准确地识别“假”射线照片图像,并将其与真实的口内图像区分开。
    BACKGROUND: During preclinical training, dental students take radiographs of acrylic (plastic) blocks containing extracted patient teeth. With the digitisation of medical records, a central archiving system was created to store and retrieve all x-ray images, regardless of whether they were images of teeth on acrylic blocks, or those from patients. In the early stage of the digitisation process, and due to the immaturity of the data management system, numerous images were mixed up and stored in random locations within a unified archiving system, including patient record files. Filtering out and expunging the undesired training images is imperative as manual searching for such images is problematic. Hence the aim of this stidy was to differentiate intraoral images from artificial images on acrylic blocks.
    METHODS: An artificial intelligence (AI) solution to automatically differentiate between intraoral radiographs taken of patients and those taken of acrylic blocks was utilised in this study. The concept of transfer learning was applied to a dataset provided by a Dental Hospital.
    RESULTS: An accuracy score, F1 score, and a recall score of 98.8%, 99.2%, and 100%, respectively, were achieved using a VGG16 pre-trained model. These results were more sensitive compared to those obtained initally using a baseline model with 96.5%, 97.5%, and 98.9% accuracy score, F1 score, and a recall score respectively.
    CONCLUSIONS: The proposed system using transfer learning was able to accurately identify \"fake\" radiographs images and distinguish them from the real intraoral images.
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  • 文章类型: Journal Article
    异质外延界面很重要,因为它们决定了器件的性能,使得职业移动性对粗糙度的分布敏感,界面处的应变和成分。扫描透射电子显微镜中的大角度环形暗场成像已用于在原子尺度上捕获它们。为了精确识别原子柱位置,已经提出了一种技术,通过它们的位置对准来平均以高扫描速率拍摄的多个图像帧,以增加信噪比。然而,由于界面上几乎完美的周期性结构,有时会错误地估计帧之间的位置对齐。这里,我们开发了一种精确位置对准的方法,其中图像首先由两个连续图像对齐,然后相对于第一对齐的积分图像更精确地对齐。我们通过将其应用于Si0.8Ge0.2(Si:硅,Ge:锗)在Si衬底上的外延薄膜。
    Heteroepitaxial interfaces are important because they determine the performance of devices such that career mobility is sensitive to the distribution of roughness, strain and composition at the interface. High-angle annular dark field imaging in scanning transmission electron microscopy has been utilized to capture them at an atomic scale. For precise identification of atomic column positions, a technique has been proposed to average multiple image frames taken at a high scanning rate by their positional alignment for increasing signal-to-noise ratio. However, the positional alignment between frames is sometimes incorrectly estimated because of the almost perfect periodic structure at the interfaces. Here, we developed an approach for precise positional alignment, where the images are first aligned by two consecutive images and then are aligned more precisely against the integrated image of the first alignment. We demonstrated our method by applying it to the heterointerface of Si0.8Ge0.2 (Si: silicon, Ge: germanium) epitaxial thin films on a Si substrate.
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  • 文章类型: Journal Article
    将二维或多维多边形划分为矩形和直线分量是计算几何中的基本问题。矩形和直线分解在艺术和科学的各个领域有多种应用,特别是当将信息分解为更小的块以进行有效分析时,操纵,identification,storage,检索是必不可少的。本文介绍了三种简单而优雅的解决方案,用于将几何形状(特别是非对角线形状)拆分为非重叠和矩形子对象。实验结果表明,所提出的每种方法都可以成功地划分n维直线形状,包括那些有洞的,转换为不包含背景元素的矩形组件。所提出的方法在13张二进制图像的数据集上进行了测试,每个有1...4个维度,最广泛的图像包含4096个元素。测试会话由5次运行组成,其中分解的起始点在适用的情况下被随机化。在最坏的情况下,三种方法中的两种可以在40毫秒内完成任务,而第三种方法的这个值大约是11秒。所有算法的成功率都是100%。
    Partitioning two- or multidimensional polygons into rectangular and rectilinear components is a fundamental problem in computational geometry. Rectangular and rectilinear decomposition have multiple applications in various fields of arts as well as sciences, especially when dissecting information into smaller chunks for efficient analysis, manipulation, identification, storage, and retrieval is essential. This article presents three simple yet elegant solutions for splitting geometric shapes (particularly non-diagonal ones) into non-overlapping and rectangular sub-objects. Experimental results suggest that each proposed method can successfully divide n-dimensional rectilinear shapes, including those with holes, into rectangular components containing no background elements. The proposed methods underwent testing on a dataset of 13 binary images, each with 1 … 4 dimensions, and the most extensive image contained 4096 elements. The test session consisted of 5 runs where starting points for decomposition were randomized where applicable. In the worst case, two of the three methods could complete the task in under 40 ms, while this value for the third method was around 11 s. The success rate for all the algorithms was 100 %.
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  • 文章类型: Journal Article
    植物性药粉中的掺假检测对于提供高质量的产品是必要的,因为它们具有经济和健康的重要性。根据成像技术作为无损工具成本低、时间短的优点,本研究旨在评估视觉成像结合机器学习区分原始产品和含有不同水平鹰嘴豆粉的掺假样品的能力。原来的产品是黑胡椒,红辣椒,还有肉桂,掺假的是小豆,掺假率分别为0、5、15、30和50%。结果表明,基于人工神经网络方法的分类器对黑胡椒进行分类,红辣椒,肉桂分别为97.8%、98.9%和95.6%,分别。支持向量机采用一对一策略的结果分别为93.33、97.78和92.22%,分别。可见成像与机器学习相结合是检测基于植物的药用粉末中掺假的可靠技术,可以应用于开发工业系统,提高性能并降低运营成本。
    Adulteration detection in plant-based medicinal powders is necessary to provide high quality products due to the economic and health importance of them. According to advantages of imaging technology as non-destructive tool with low cost and time, the present research aims to evaluate the ability of the visible imaging combined with machine learning for distinguish original products and the adulterated samples with different levels of chickpea flour. The original products were black pepper, red pepper, and cinnamon, the adulterant was chick pea, and the adulteration levels were 0, 5, 15, 30, and 50 %. The results showed that the accuracies of the classifier based on the artificial neural networks method for classification of black pepper, red pepper, and cinnamon were 97.8, 98.9, and 95.6 %, respectively. The results for support vector machine with one-to-one strategy were 93.33, 97.78 and 92.22 %, respectively. Visible imaging combined with machine learning are reliable technologies to detect adulteration in plant-based medicinal powders so that can be applied to develop industrial systems and improving performance and reducing operation costs.
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  • 文章类型: Journal Article
    本研究旨在评估高分辨率波前相位成像传感器(WFPI)在Fuchs\'内皮角膜营养不良(FECD)眼睛中的适用性,通过使用定制设计的自动Guttae检测方法(AGDM)进行定性和定量分析。使用t·eyede像差仪测量眼相,然后进行处理以获得其高通滤波器图(HPFM)。受试者是来自Jiménez-Díaz基金会的病理和健康患者(马德里,西班牙)。开发了AGDM,并将其应用于直径为3和5mm的瞳孔。提取并评估了一组指标,如均方根误差(RMS),古塔的数量,古塔地区,和Delaunay三角测量区(DT)。最后,对支持向量机(SVM)模型进行训练,以在病理和健康眼睛之间进行分类。定量地,根据眼科医生对裂隙灯检查牙槽分布的描述,HPFM显示出黑点图案。当使用相同的瞳孔大小比较FECD和健康组时,所有指标均存在显着统计学差异;但是比较同一组的两个瞳孔大小,大多数变量存在显着差异。该传感器是通过波前相位变化客观诊断和监测这种病理的价值工具。
    This study aims to evaluate the applicability of the high-resolution WaveFront Phase Imaging Sensor (WFPI) in eyes with Fuchs\' Endothelial Corneal Dystrophy (FECD) through qualitative and quantitative analysis using a custom-designed Automatic Guttae Detection Method (AGDM). The ocular phase was measured using the t · eyede aberrometer and then was processed to obtain its High-Pass Filter Map (HPFM). The subjects were pathological and healthy patients from the Fundación Jiménez-Díaz Hospital (Madrid, Spain). The AGDM was developed and applied in pupils with 3 and 5 mm of diameter. A set of metrics were extracted and evaluated like the Root-Mean-Square error (RMS), Number of guttae, Guttae Area, and Area of Delaunay Triangulation (DT). Finally, a Support Vector Machine (SVM) model was trained to classify between pathological and healthy eyes. Quantitatively, the HPFM reveals a dark spots pattern according to the ophthalmologist\'s description of the slit-lamp examination of guttae distribution. There were significant statistical differences in all the metrics when FECD and Healthy groups were compared using the same pupil size; but comparing both pupil sizes for the same group there were significant differences in most of the variables. This sensor is a value tool to objectively diagnose and monitor this pathology through wavefront phase changes.
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  • 文章类型: Journal Article
    磁共振波谱(MRS)是少数能够在体内进行神经化学和代谢测量的非侵入性成像模式之一。传统上,MRS的临床应用范围很窄。最常见的用途是“单体素光谱学”变体,以辨别大脑中一个位置的光谱中乳酸峰的存在,通常用于评估新生儿的缺血。因此,传统上,将丰富的光谱数据减少为二进制变量并不需要进行大量的信号处理。然而,扫描仪变得更强大,MRS序列更先进,增加数据复杂性,并在频谱维度之外增加2到3个空间维度。结果是在空间和光谱上变化的MRS图像,对于图像处理创新而言是成熟的。尽管有这种潜力,用于在不同扫描仪上健壮地访问和操纵MRS数据的物流,数据格式,和软件标准仍不清楚。因此,随着对MRS研究的进展,显然需要更好地表征其图像处理考虑因素,以促进科学家和工程师的创新。建立在既定的神经影像学标准上,我们描述了一个框架,用于操纵这些图像,将其推广到体素,光谱,以及跨空间和多个成像部位的代谢物水平,同时与LCModel整合,一种广泛使用的定量MRS峰拟合平台。在这样做的时候,我们提供的例子来证明这种工作流程相对于最近的出版物和新数据的优势。总的来说,我们希望我们的表征能够降低神经影像学研究人员进入MRS处理的门槛.
    Magnetic resonance spectroscopy (MRS) is one of the few non-invasive imaging modalities capable of making neurochemical and metabolic measurements in vivo. Traditionally, the clinical utility of MRS has been narrow. The most common use has been the \"single-voxel spectroscopy\" variant to discern the presence of a lactate peak in the spectra in one location in the brain, typically to evaluate for ischemia in neonates. Thus, the reduction of rich spectral data to a binary variable has not classically necessitated much signal processing. However, scanners have become more powerful and MRS sequences more advanced, increasing data complexity and adding 2 to 3 spatial dimensions in addition to the spectral one. The result is a spatially- and spectrally-variant MRS image ripe for image processing innovation. Despite this potential, the logistics for robustly accessing and manipulating MRS data across different scanners, data formats, and software standards remain unclear. Thus, as research into MRS advances, there is a clear need to better characterize its image processing considerations to facilitate innovation from scientists and engineers. Building on established neuroimaging standards, we describe a framework for manipulating these images that generalizes to the voxel, spectral, and metabolite level across space and multiple imaging sites while integrating with LCModel, a widely used quantitative MRS peak-fitting platform. In doing so, we provide examples to demonstrate the advantages of such a workflow in relation to recent publications and with new data. Overall, we hope our characterizations will lower the barrier of entry to MRS processing for neuroimaging researchers.
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  • 文章类型: Journal Article
    肺部图像分割在计算机辅助肺部疾病诊断和治疗中起着重要作用。
    本文探讨了通过生成对抗网络进行肺部CT图像分割的方法。我们采用了各种生成对抗网络,并利用它们的图像平移功能来执行图像分割。采用生成对抗网络将原始肺部图像转换为分割图像。
    在真实的肺部图像数据集上测试了基于生成对抗网络的分割方法。实验结果表明,该方法优于最先进的方法。
    基于生成对抗网络的方法对肺部图像分割有效。
    UNASSIGNED: Lung image segmentation plays an important role in computer-aid pulmonary disease diagnosis and treatment.
    UNASSIGNED: This paper explores the lung CT image segmentation method by generative adversarial networks. We employ a variety of generative adversarial networks and used their capability of image translation to perform image segmentation. The generative adversarial network is employed to translate the original lung image into the segmented image.
    UNASSIGNED: The generative adversarial networks-based segmentation method is tested on real lung image data set. Experimental results show that the proposed method outperforms the state-of-the-art method.
    UNASSIGNED: The generative adversarial networks-based method is effective for lung image segmentation.
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  • 文章类型: Journal Article
    近几十年来,天然和人造胶体,以及纳米粒子,越来越多地用于各种应用中。因此,随着消费的增长,表面和地下环境更暴露于这些颗粒。这些颗粒的存在和微生物的胶体促进运输,多孔介质中溶解的污染物和流动胶体之间的相互作用,以及胶体通过地下水的命运和运输-人类社会的主要水源之一-吸引了广泛的研究。本研究调查了几种图像处理方法在胶体检测领域的性能,这是多孔介质研究后续步骤的先决条件。我们在基于显微图像分割的方法上采用了四种不同类别的图像处理方法,基于背景检测的方法,基于过滤器的方法,和基于形态学的方法-进行胶体的检测过程。应用了八种方法,随后分析了它们的缺点和优点,以确定该领域中最好的方法。最后,我们提出了一种集成方法,利用三种最佳方法的优势,使用多数投票来更准确地检测胶体。在实验中,Precision,回想一下,F-measure,和TCR标准被视为评估工具。实验结果表明,图像处理方法在识别胶体时具有很高的准确性。在所有这些方法中,基于形态学的方法是最成功的,实现最佳检测性能,改善小胶体的有限区分特征。此外,我们的合奏方法,在所有评估标准中获得完美分数,突出了其与其他检测方法相比的优越性。
    Over recent decades, natural and artificial colloids, as well as nanoparticles, have been increasingly used in various applications. Consequently, with this rising consumption, surface and subsurface environments are more exposed to these particles. The presence of these particles and the colloid-facilitated transport of microorganisms, the interactions between dissolved contaminants and mobile colloids in porous media, and the fate and transport of colloids through groundwater-one of the primary sources of water supply for human societies-have attracted extensive research. This study investigates the performance of several image processing methods in the field of colloid detection, which is a prerequisite for the subsequent steps in porous media research. We employed four different categories of image processing approaches on microscopy images-segmentation-based methods, background-detection-based methods, filter-based methods, and morphology-based methods-to conduct the detection process of colloids. Eight methods were applied and subsequently analyzed in terms of their drawbacks and advantages to determine the best ones in this domain. Finally, we proposed an ensemble approach that leverages the strengths of the three best methods using a majority vote to detect colloids more accurately. In experiments, Precision, Recall, F-measure, and TCR criteria were considered as evaluation tools. Experimental results demonstrate the high accuracy of image processing methods in recognizing colloids. Among all these methods, morphology-based methods were the most successful, achieving the best detection performance and improving the limited distinguishing features of small colloids. Moreover, our ensemble approach, achieving perfect scores across all evaluation criteria, highlights its superiority compared with other detection methods.
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  • 文章类型: Journal Article
    背景:计算机断层扫描(CT)是膝关节骨骼评估的首选成像方式,而骨骼的MRI正在积极发展。我们提出了三种使用短间隔增量超短回波时间(δUTE)的技术,场回波(FE),和FE,高分辨率深度学习重建(HR-DLR)用于直接骨MRI。方法:健康志愿者的膝盖(n=5,3名女性,38±17.2岁)进行成像。通过平均来自多个回波的图像并反转来生成类似CT的图像。测定骨信噪比(SNR)和对比噪声比(CNR)。结果:δUTE描绘了具有高信号强度的皮质骨,但无法解决小梁。相比之下,FE和FEHR-DLR图像均描绘了具有高信号的皮质和小梁骨。定量地,而对于皮质骨,δUTE具有〜100的良好骨SNR和〜40的CNR,FEHR-DLR的SNR明显更高(p<0.05),超过400,CNR超过200。结论:对于骨骼表面的3D渲染,与FE序列相比,δUTE提供了更好的图像对比度以及骨骼与韧带和肌腱的分离。虽然仍然没有MRI技术提供完美的类似CT的对比度,MRI技术的不断进步可能为特定用例带来益处.
    Background: Computed tomography (CT) is the preferred imaging modality for bone evaluation of the knee, while MRI of the bone is actively being developed. We present three techniques using short-interval delta ultrashort echo time (δUTE), field echo (FE), and FE with high resolution-deep learning reconstruction (HR-DLR) for direct bone MRI. Methods: Knees of healthy volunteers (n = 5, 3 females, 38 ± 17.2 years old) were imaged. CT-like images were generated by averaging images from multiple echoes and inverting. The bone signal-to-noise ratio (SNR) and contrast-to-noise ratio (CNR) were determined. Results: The δUTE depicted a cortical bone with high signal intensity but could not resolve trabeculae. In contrast, both the FE and FE HR-DLR images depicted cortical and trabecular bone with high signal. Quantitatively, while δUTE had a good bone SNR of ~100 and CNR of ~40 for the cortical bone, the SNR for the FE HR-DLR was significantly higher (p < 0.05), at over 400, and CNR at over 200. Conclusions: For 3D rendering of the bone surfaces, the δUTE provided better image contrast and separation of bone from ligaments and tendons than the FE sequences. While there still is no MRI technique that provides a perfect CT-like contrast, continued advancement of MRI techniques may provide benefits for specific use cases.
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