Computer-vision

  • 文章类型: Journal Article
    基于计算机视觉的植物叶片分割技术对植物分类具有重要意义,监测植物生长,精准农业,和其他科学研究。在本文中,YOLOv8-seg模型用于图像中单个叶片的自动分割。为了提高分割性能,我们进一步在标准Yolov8模型中引入了Ghost模块和双向特征金字塔网络(BiFPN)模块,并提出了两个修改版本。Ghost模块可以通过廉价的转换操作生成几个内在特征图,BiFPN模块可以融合多尺度特征,提高小叶的分割性能。实验结果表明,Yolov8在叶片分割任务中表现良好,和Ghost模块和BiFPN模块可以进一步提高性能。我们提出的方法在植物表型(CVPPP)叶片分割挑战中的计算机视觉问题的所有五个测试数据集上实现了86.4%的叶片分割得分(最佳骰子)。表现优于其他报告的方法。
    Computer-vision-based plant leaf segmentation technology is of great significance for plant classification, monitoring of plant growth, precision agriculture, and other scientific research. In this paper, the YOLOv8-seg model was used for the automated segmentation of individual leaves in images. In order to improve the segmentation performance, we further introduced a Ghost module and a Bidirectional Feature Pyramid Network (BiFPN) module into the standard Yolov8 model and proposed two modified versions. The Ghost module can generate several intrinsic feature maps with cheap transformation operations, and the BiFPN module can fuse multi-scale features to improve the segmentation performance of small leaves. The experiment results show that Yolov8 performs well in the leaf segmentation task, and the Ghost module and BiFPN module can further improve the performance. Our proposed approach achieves a 86.4% leaf segmentation score (best Dice) over all five test datasets of the Computer Vision Problems in Plant Phenotyping (CVPPP) Leaf Segmentation Challenge, outperforming other reported approaches.
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  • 文章类型: Journal Article
    背景:轻微的身体异常(MPA)是与胎儿发育中断有关的先天性形态学异常。MPA在22q11.2缺失综合征(22q11DS)和精神病谱系障碍(PS)中很常见,并且可能代表早期胚胎发育的破坏,这可能有助于识别这些疾病中与精神病相关的重叠机制。
    方法:这里,从22q11DS(n=150)收集2D数码照片,PS(n=55),通常发育(TD;n=93)个体。使用两种计算机视觉技术对照片进行了分析:(1)DeepGestalt算法(Face2Gene(F2G))技术,以识别遗传介导的面部疾病的存在,和(2)Emotrics-一种定位和测量面部特征的半自动机器学习技术。
    结果:F2G可靠地确定了22q11DS患者;PS患者的面部与多种遗传条件相匹配,包括FragileX和22q11DS。所有F2G得分的PCA衍生因子载荷表明与22q11DS和PS相关的独特且重叠的面部模式。与TD相比,22q11DS中眼睛和鼻子的局部面部测量值更小,而PS显示中间测量值。
    结论:颅面畸形学22q11DS和PS在亚精神病症状受损或痛苦之前重叠和明显的程度可能使我们能够更可靠地识别处于危险中的年轻人,并且处于早期发展阶段。
    BACKGROUND: Minor physical anomalies (MPAs) are congenital morphological abnormalities linked to disruptions of fetal development. MPAs are common in 22q11.2 deletion syndrome (22q11DS) and psychosis spectrum disorders (PS) and likely represent a disruption of early embryologic development that may help identify overlapping mechanisms linked to psychosis in these disorders.
    METHODS: Here, 2D digital photographs were collected from 22q11DS (n = 150), PS (n = 55), and typically developing (TD; n = 93) individuals. Photographs were analyzed using two computer-vision techniques: (1) DeepGestalt algorithm (Face2Gene (F2G)) technology to identify the presence of genetically mediated facial disorders, and (2) Emotrics-a semi-automated machine learning technique that localizes and measures facial features.
    RESULTS: F2G reliably identified patients with 22q11DS; faces of PS patients were matched to several genetic conditions including FragileX and 22q11DS. PCA-derived factor loadings of all F2G scores indicated unique and overlapping facial patterns that were related to both 22q11DS and PS. Regional facial measurements of the eyes and nose were smaller in 22q11DS as compared to TD, while PS showed intermediate measurements.
    CONCLUSIONS: The extent to which craniofacial dysmorphology 22q11DS and PS overlapping and evident before the impairment or distress of sub-psychotic symptoms may allow us to identify at-risk youths more reliably and at an earlier stage of development.
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  • 文章类型: Journal Article
    如今,基于卷积神经网络(CNN)的深度学习方法被广泛应用于从故障中检测和分类水果,颜色和尺寸特征。在这项研究中,采用两种不同的神经网络模型估计器,使用单点多盒检测(SSD)Mobilenet和FasterRegion-CNN(FasterR-CNN)模型架构来检测苹果,使用从红苹果物种生成的自定义数据集。每个神经网络模型都使用4000个苹果图像使用创建的数据集进行训练。使用经过训练的模型,在商业生产的苹果园中使用开发的飞行机器人系统(FRS)自主检测和计数苹果。这样,旨在使生产者在达成商业协议之前做出准确的产量预测。在本文中,使用许多研究中引用的COCO数据集训练的SSD-Mobilenet和FasterR-CNN架构模型,和SSD-Mobilenet和使用自定义数据集训练的学习率范围为0.015-0.04的FasterR-CNN模型在性能方面进行了实验比较。在实施的实验中,据观察,所提出的模型的准确率提高到93%的水平。因此,已经观察到,更快的R-CNN模型,这是开发的,通过将损失值降低到0.1以下,可以做出非常成功的确定。
    Nowadays, Convolution Neural Network (CNN) based deep learning methods are widely used in detecting and classifying fruits from faults, color and size characteristics. In this study, two different neural network model estimators are employed to detect apples using the Single-Shot Multibox Detection (SSD) Mobilenet and Faster Region-CNN (Faster R-CNN) model architectures, with the custom dataset generated from the red apple species. Each neural network model is trained with created dataset using 4000 apple images. With the trained model, apples are detected and counted autonomously using the developed Flying Robotic System (FRS) in a commercially produced apple orchard. In this way, it is aimed that producers make accurate yield forecasts before commercial agreements. In this paper, SSD-Mobilenet and Faster R-CNN architecture models trained with COCO datasets referenced in many studies, and SSD-Mobilenet and Faster R-CNN models trained with a learning rate ranging from 0.015-0.04 using the custom dataset are compared experimentally in terms of performance. In the experiments implemented, it is observed that the accuracy rates of the proposed models increased to the level of 93%. Consequently, it has been observed that the Faster R-CNN model, which is developed, makes extremely successful determinations by lowering the loss value below 0.1.
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  • 文章类型: Journal Article
    背景:在手球中,额平面的运动学似乎是下肢损伤发展的最重要因素之一。膝关节外翻角度是预防伤害的基本轴,通常使用2D系统进行测量,例如Kinovea软件(版本0.9.4。).计算机视觉等技术进步有可能彻底改变运动医学。然而,在临床实践中使用计算机视觉之前,必须评估计算机视觉的有效性和可靠性。这项研究的目的是分析基于计算机视觉的Beta版应用程序的重测和评分者间可靠性以及并发有效性,以测量精英手球运动员的膝盖外翻角度。
    方法:对42名优秀手球运动员的膝关节外翻角度进行测量。拍摄了单腿蹲下时的正面照片,两名考官在基线和一周随访时通过基于计算机视觉的beta应用程序测量角度,以计算测试重测和评估者间的可靠性。第三位检查者使用2DKinovea软件评估膝关节外翻角度以计算并发有效性。
    结果:优秀手球运动员膝关节外翻角度为158.54±5.22°。两位考官的重测可靠性都很好,显示出类内相关系数(ICC)为0.859-0.933。评估者间的可靠性显示出中等的ICC:0.658(0.354-0.819)。应用测量的标准误差在1.69°和3.50°之间,最小可检测变化在4.68°和9.70°之间。并行效度很强,r=0.931;p<0.001。
    结论:与Kinovea软件相比,基于计算机的智能手机应用程序在测量膝关节外翻角度方面表现出出色的重测和评分者间可靠性以及强大的并发有效性。
    BACKGROUND: In handball, the kinematics of the frontal plane seem to be one of the most important factors for the development of lower limb injuries. The knee valgus angle is a fundamental axis for injury prevention and is usually measured with 2D systems such as Kinovea software (Version 0.9.4.). Technological advances such as computer vision have the potential to revolutionize sports medicine. However, the validity and reliability of computer vision must be evaluated before using it in clinical practice. The aim of this study was to analyze the test-retest and inter-rater reliability and the concurrent validity of a beta version app based on computer vision for the measurement of knee valgus angle in elite handball athletes.
    METHODS: The knee valgus angle of 42 elite handball athletes was measured. A frontal photo during a single-leg squat was taken, and two examiners measured the angle by the beta application based on computer vision at baseline and at one-week follow-up to calculate the test-retest and inter-rater reliability. A third examiner assessed the knee valgus angle using 2D Kinovea software to calculate the concurrent validity.
    RESULTS: The knee valgus angle in the elite handball athletes was 158.54 ± 5.22°. The test-retest reliability for both examiners was excellent, showing an Intraclass Correlation Coefficient (ICC) of 0.859-0.933. The inter-rater reliability showed a moderate ICC: 0.658 (0.354-0.819). The standard error of the measurement with the app was stated between 1.69° and 3.50°, and the minimum detectable change was stated between 4.68° and 9.70°. The concurrent validity was strong r = 0.931; p < 0.001.
    CONCLUSIONS: The computer-based smartphone app showed an excellent test-retest and inter-rater reliability and a strong concurrent validity compared to Kinovea software for the measurement of the knee valgus angle.
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