缺陷增加了建筑项目的成本和持续时间。自动缺陷检测将减少文档工作,这是降低延迟建筑项目的缺陷风险所必需的。由于混凝土是一种广泛使用的建筑材料,因此这项工作着重于检测蜂窝,这是混凝土结构的实质缺陷,甚至可能影响结构完整性。首先,比较图像是从网络上刮下来或从实际实践中获得的。结果表明,Web图像仅代表蜂窝的选择,并且不会捕获完整的差异。其次,对MASK R-CNN和EFIDENENET-B0进行了培训,用于评估实例分割和基于斑块的分类,分别达到47.7%的精度和34.2%的召回率以及68.5%的精度和55.7%的召回率。尽管这些模型的性能不足以完全自动化缺陷检测,但这些模型可用于积极学习中,集成到缺陷文档系统中。总之,CNN可以帮助检测混凝土中的蜂窝。
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X-ray imaging technology has been used for decades in clinical tasks to reveal the internal condition of different organs, and in recent years, it has become more common in other areas such as industry, security, and geography. The recent development of computer vision and machine learning techniques has also made it easier to automatically process X-ray images and several machine learning-based object (anomaly) detection, classification, and segmentation methods have been recently employed in X-ray image analysis. Due to the high potential of deep learning in related image processing applications, it has been used in most of the studies. This survey reviews the recent research on using computer vision and machine learning for X-ray analysis in industrial production and security applications and covers the applications, techniques, evaluation metrics, datasets, and performance comparison of those techniques on publicly available datasets. We also highlight some drawbacks in the published research and give recommendations for future research in computer vision-based X-ray analysis.
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基础设施检查是一个非常昂贵的任务,需要技术人员访问远程或难以到达的地方。这是电力传动塔的情况,这些塔稀疏地定位,需要培训的工人爬上它们以寻找损坏。最近,在行业中使用无人机或直升机进行遥控录音,使技术人员进行这种危险的任务。然而,这留下了分析大量图像的问题,这具有很大的自动化潜力。由于几个原因,这是一个具有挑战性的任务。首先,缺乏可自由的培训数据和难以收集它的问题。另外,构成损坏的界限是模糊的,在数据​​标记中引入了一定程度的主观性。图像中的不平衡类分布也在增加任务的难度方面发挥作用。本文解决了传输塔中结构损伤检测的问题,解决了这些问题。我们的主要贡献是在远程获取的无人机图像上开发损坏检测,应用技术来克服数据稀缺和歧义的问题,以及评估这种方法解决这个特殊问题的方法的可行性。
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集中的动物饲养业务(CAFOS)对空气,水和公共卫生构成严重风险,但已被证明挑战规范。美国政府问责办公室注意到基本挑战是缺乏关于咖啡馆的全面的位置信息。我们使用美国农业部的国家农产病程(Naip)1M / Pixel Acial Imagerery来检测美国大陆的家禽咖啡馆。我们培养卷积神经网络(CNN)模型来识别单个家禽谷仓,并将最佳表现模型应用于超过42 TB的图像,以创建家禽咖啡座的第一个国家开源数据集。我们验证了来自加利福尼亚州的10个手标县的家禽咖啡馆设施的模型预测,并证明这种方法具有填补环境监测中差距的显着潜力。
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The 1$^{\text{st}}$ Workshop on Maritime Computer Vision (MaCVi) 2023 focused on maritime computer vision for Unmanned Aerial Vehicles (UAV) and Unmanned Surface Vehicle (USV), and organized several subchallenges in this domain: (i) UAV-based Maritime Object Detection, (ii) UAV-based Maritime Object Tracking, (iii) USV-based Maritime Obstacle Segmentation and (iv) USV-based Maritime Obstacle Detection. The subchallenges were based on the SeaDronesSee and MODS benchmarks. This report summarizes the main findings of the individual subchallenges and introduces a new benchmark, called SeaDronesSee Object Detection v2, which extends the previous benchmark by including more classes and footage. We provide statistical and qualitative analyses, and assess trends in the best-performing methodologies of over 130 submissions. The methods are summarized in the appendix. The datasets, evaluation code and the leaderboard are publicly available at https://seadronessee.cs.uni-tuebingen.de/macvi.
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检查裂缝是正确监视和维护建筑物的重要过程。但是,手动裂缝检查是耗时,不一致且危险的(例如,在高建筑物中)。由于开源AI技术的开发,可用的无人机(UAV)的增加以及智能手机摄像机的可用性,已经有可能自动化建筑物裂纹检查过程。这项研究介绍了使用最先进的分段算法来开发一种易于使用,免费和开源的自动化建筑物外部裂纹检查软件(ABECIS),用于建筑和设施经理定量和定性报告。使用在现实世界中的无人机和智能手机摄像机和受控实验室环境中收集的图像对Abecis进行了测试。从算法的原始输出来看,用于测试实验的工会上的中值相交​​是(1)0.686,用于使用商业无人机在受控的实验室环境中使用商业无人机在室内裂纹检测实验,(2)0.186,用于使用室内裂纹检测在施工现场检测的室内裂纹。智能手机和(3)0.958使用商业无人机在大学校园进行户外裂纹检测。当人类操作员选择性地消除误报时,这些IOU结果可以显着提高到0.8以上。通常,Abecis最适合室外无人机图像,将算法预测与人类验证/干预相结合提供非常准确的裂纹检测结果。该软件可公开可用,可以下载以供开箱即用:https://github.com/smart-nyuad/abecis
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工业X射线分析在需要保证某些零件的结构完整性的航空航天,汽车或核行业中很常见。但是,射线照相图像的解释有时很困难,可能导致两名专家在缺陷分类上不同意。本文介绍的自动缺陷识别(ADR)系统将减少分析时间,还将有助于减少对缺陷的主观解释,同时提高人类检查员的可靠性。我们的卷积神经网络(CNN)模型达到94.2 \%准确性(MAP@iou = 50 \%),当应用于汽车铝铸件数据集(GDXRAR)时,它被认为与预期的人类性能相似,超过了当前状态该数据集的艺术。在工业环境上,其推理时间少于每个DICOM图像,因此可以安装在生产设施上,不会影响交付时间。此外,还进行了对主要高参数的消融研究,以优化从75 \%映射的初始基线结果最高94.2 \%map的模型准确性。
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Progress on object detection is enabled by datasets that focus the research community's attention on open challenges. This process led us from simple images to complex scenes and from bounding boxes to segmentation masks. In this work, we introduce LVIS (pronounced 'el-vis'): a new dataset for Large Vocabulary Instance Segmentation. We plan to collect ∼2 million high-quality instance segmentation masks for over 1000 entry-level object categories in 164k images. Due to the Zipfian distribution of categories in natural images, LVIS naturally has a long tail of categories with few training samples. Given that state-of-the-art deep learning methods for object detection perform poorly in the low-sample regime, we believe that our dataset poses an important and exciting new scientific challenge. LVIS is available at http://www.lvisdataset.org.
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腕骨骨折是医院的常见情况,特别是在紧急服务中。医生需要来自各种医疗设备的图像,以及患者的病史和身体检查,正确诊断这些骨折并采用适当的治疗。本研究旨在使用腕X射线图像的深度学习进行骨折检测,以帮助专门在现场专门的医生,特别是在骨折的诊断中工作。为此目的,使用从Gazi大学医院获得的腕X射线图像数据集的基于深度学习的物体检测模型来执行20个不同的检测程序。这里使用了DCN,动态R_CNN,更快的R_CNN,FSAF,Libra R_CNN,PAA,RetinAnet,Regnet和具有各种骨架的基于SABL深度学习的物体检测模型。为了进一步改进研究中的检测程序,开发了5种不同的集合模型,后来用于改革集合模型,为我们的研究开发一个独一无二的检测模型,标题为腕骨骨折检测组合(WFD_C)。根据检测到总共26种不同的骨折,检测结果的最高结果是WFD_C模型中的0.8639平均精度(AP50)。本研究支持华为土耳其研发中心,范围在持续的合作项目编码071813中,华为大学,华为和Medskor。
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In object detection, the intersection over union (IoU) threshold is frequently used to define positives/negatives. The threshold used to train a detector defines its quality. While the commonly used threshold of 0.5 leads to noisy (low-quality) detections, detection performance frequently degrades for larger thresholds. This paradox of high-quality detection has two causes: 1) overfitting, due to vanishing positive samples for large thresholds, and 2) inference-time quality mismatch between detector and test hypotheses. A multi-stage object detection architecture, the Cascade R-CNN, composed of a sequence of detectors trained with increasing IoU thresholds, is proposed to address these problems. The detectors are trained sequentially, using the output of a detector as training set for the next. This resampling progressively improves hypotheses quality, guaranteeing a positive training set of equivalent size for all detectors and minimizing overfitting. The same cascade is applied at inference, to eliminate quality mismatches between hypotheses and detectors. An implementation of the Cascade R-CNN without bells or whistles achieves state-of-the-art performance on the COCO dataset, and significantly improves high-quality detection on generic and specific object detection datasets, including VOC, KITTI, CityPerson, and WiderFace. Finally, the Cascade R-CNN is generalized to instance segmentation, with nontrivial improvements over the Mask R-CNN. To facilitate future research, two implementations are made available at https://github.com/zhaoweicai/cascade-rcnn (Caffe) and https://github.com/zhaoweicai/Detectron-Cascade-RCNN (Detectron).
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Existing image classification datasets used in computer vision tend to have a uniform distribution of images across object categories. In contrast, the natural world is heavily imbalanced, as some species are more abundant and easier to photograph than others. To encourage further progress in challenging real world conditions we present the iNaturalist species classification and detection dataset, consisting of 859,000 images from over 5,000 different species of plants and animals. It features visually similar species, captured in a wide variety of situations, from all over the world. Images were collected with different camera types, have varying image quality, feature a large class imbalance, and have been verified by multiple citizen scientists. We discuss the collection of the dataset and present extensive baseline experiments using state-of-the-art computer vision classification and detection models. Results show that current nonensemble based methods achieve only 67% top one classification accuracy, illustrating the difficulty of the dataset. Specifically, we observe poor results for classes with small numbers of training examples suggesting more attention is needed in low-shot learning.
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海洋生态系统及其鱼类栖息地越来越重要,因为它们在提供有价值的食物来源和保护效果方面的重要作用。由于它们的偏僻且难以接近自然,因此通常使用水下摄像头对海洋环境和鱼类栖息地进行监测。这些相机产生了大量数字数据,这些数据无法通过当前的手动处理方法有效地分析,这些方法涉及人类观察者。 DL是一种尖端的AI技术,在分析视觉数据时表现出了前所未有的性能。尽管它应用于无数领域,但仍在探索其在水下鱼类栖息地监测中的使用。在本文中,我们提供了一个涵盖DL的关键概念的教程,该教程可帮助读者了解对DL的工作原理的高级理解。该教程还解释了一个逐步的程序,讲述了如何为诸如水下鱼类监测等挑战性应用开发DL算法。此外,我们还提供了针对鱼类栖息地监测的关键深度学习技术的全面调查,包括分类,计数,定位和细分。此外,我们对水下鱼类数据集进行了公开调查,并比较水下鱼类监测域中的各种DL技术。我们还讨论了鱼类栖息地加工深度学习的新兴领域的一些挑战和机遇。本文是为了作为希望掌握对DL的高级了解,通过遵循我们的分步教程而为其应用开发的海洋科学家的教程,并了解如何发展其研究,以促进他们的研究。努力。同时,它适用于希望调查基于DL的最先进方法的计算机科学家,以进行鱼类栖息地监测。
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Asteroids are an indelible part of most astronomical surveys though only a few surveys are dedicated to their detection. Over the years, high cadence microlensing surveys have amassed several terabytes of data while scanning primarily the Galactic Bulge and Magellanic Clouds for microlensing events and thus provide a treasure trove of opportunities for scientific data mining. In particular, numerous asteroids have been observed by visual inspection of selected images. This paper presents novel deep learning-based solutions for the recovery and discovery of asteroids in the microlensing data gathered by the MOA project. Asteroid tracklets can be clearly seen by combining all the observations on a given night and these tracklets inform the structure of the dataset. Known asteroids were identified within these composite images and used for creating the labelled datasets required for supervised learning. Several custom CNN models were developed to identify images with asteroid tracklets. Model ensembling was then employed to reduce the variance in the predictions as well as to improve the generalisation error, achieving a recall of 97.67%. Furthermore, the YOLOv4 object detector was trained to localize asteroid tracklets, achieving a mean Average Precision (mAP) of 90.97%. These trained networks will be applied to 16 years of MOA archival data to find both known and unknown asteroids that have been observed by the survey over the years. The methodologies developed can be adapted for use by other surveys for asteroid recovery and discovery.
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The human ear is generally universal, collectible, distinct, and permanent. Ear-based biometric recognition is a niche and recent approach that is being explored. For any ear-based biometric algorithm to perform well, ear detection and segmentation need to be accurately performed. While significant work has been done in existing literature for bounding boxes, a lack of approaches output a segmentation mask for ears. This paper trains and compares three newer models to the state-of-the-art MaskRCNN (ResNet 101 +FPN) model across four different datasets. The Average Precision (AP) scores reported show that the newer models outperform the state-of-the-art but no one model performs the best over multiple datasets.
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道路车辙是严重的道路障碍,可能导致早期和昂贵的维护成本的道路过早失败。在过去的几年中,正在积极进行使用图像处理技术和深度学习的道路损害检测研究。但是,这些研究主要集中在检测裂缝,坑洼及其变体上。很少有关于探测道路的研究。本文提出了一个新颖的道路车辙数据集,其中包括949张图像,并提供对象级别和像素级注释。部署了对象检测模型和语义分割模型,以检测所提出的数据集上的道路插道,并对模型预测进行了定量和定性分析,以评估模型性能并确定使用拟议方法检测道路插道时面临的挑战。对象检测模型Yolox-S实现了61.6%的Map@iou = 0.5,语义分割模型PSPNET(RESNET-50)达到54.69,精度为72.67,从而为将来的类似工作提供了基准的准确性。拟议的道路车辙数据集和我们的研究结果将有助于加速使用深度学习发现道路车辙的研究。
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许多开放世界应用程序需要检测新的对象,但最先进的对象检测和实例分段网络在此任务中不屈服。关键问题在于他们假设没有任何注释的地区应被抑制为否定,这教导了将未经讨犯的对象视为背景的模型。为了解决这个问题,我们提出了一个简单但令人惊讶的强大的数据增强和培训方案,我们呼唤学习来检测每件事(LDET)。为避免抑制隐藏的对象,背景对象可见但未标记,我们粘贴在从原始图像的小区域采样的背景图像上粘贴带有的注释对象。由于仅对这种综合增强的图像培训遭受域名,我们将培训与培训分为两部分:1)培训区域分类和回归头在增强图像上,2)在原始图像上训练掩模头。通过这种方式,模型不学习将隐藏对象作为背景分类,同时概括到真实图像。 LDET导致开放式世界实例分割任务中的许多数据集的重大改进,表现出CoCo上的交叉类别概括的基线,以及对UVO和城市的交叉数据集评估。
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本文推动了在图像中分解伪装区域的信封,成了有意义的组件,即伪装的实例。为了促进伪装实例分割的新任务,我们将在数量和多样性方面引入DataSet被称为Camo ++,该数据集被称为Camo ++。新数据集基本上增加了具有分层像素 - 明智的地面真理的图像的数量。我们还为伪装实例分割任务提供了一个基准套件。特别是,我们在各种场景中对新构造的凸轮++数据集进行了广泛的评估。我们还提出了一种伪装融合学习(CFL)伪装实例分割框架,以进一步提高最先进的方法的性能。数据集,模型,评估套件和基准测试将在我们的项目页面上公开提供:https://sites.google.com/view/ltnghia/research/camo_plus_plus
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尽管广泛用作可视检测任务的性能措施,但平均精度(AP)In(i)的限制在反映了本地化质量,(ii)对其计算的设计选择的鲁棒性以及其对输出的适用性没有信心分数。 Panoptic质量(PQ),提出评估Panoptic Seationation(Kirillov等,2019)的措施,不会遭受这些限制,而是限于Panoptic Seationation。在本文中,我们提出了基于其本地化和分类质量的视觉检测器的平均匹配误差,提出了定位召回精度(LRP)误差。 LRP错误,最初仅为Oksuz等人进行对象检测。 (2018),不遭受上述限制,适用于所有视觉检测任务。我们还介绍了最佳LRP(OLRP)错误,因为通过置信区获得的最小LRP错误以评估视觉检测器并获得部署的最佳阈值。我们提供对AP和PQ的LRP误差的详细比较分析,并使用七个可视检测任务(即对象检测,关键点检测,实例分割,Panoptic分段,视觉关系检测,使用近100个最先进的视觉检测器零拍摄检测和广义零拍摄检测)使用10个数据集来统一地显示LRP误差提供比其对应物更丰富和更辨别的信息。可用的代码:https://github.com/kemaloksuz/lrp-error
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The PASCAL Visual Object Classes (VOC) challenge is a benchmark in visual object category recognition and detection, providing the vision and machine learning communities with a standard dataset of images and annotation, and standard evaluation procedures. Organised annually from 2005 to present, the challenge and its associated dataset has become accepted as the benchmark for object detection.This paper describes the dataset and evaluation procedure. We review the state-of-the-art in evaluated methods for both classification and detection, analyse whether the methods are statistically different, what they are learning from the images (e.g. the object or its context), and what the methods find easy or confuse. The paper concludes with lessons learnt in the three year history of the challenge, and proposes directions for future improvement and extension.
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车辆分类是一台热电电脑视觉主题,研究从地面查看到顶视图。在遥感中,顶视图的使用允许了解城市模式,车辆集中,交通管理等。但是,在瞄准像素方面的分类时存在一些困难:(a)大多数车辆分类研究使用对象检测方法,并且最公开的数据集设计用于此任务,(b)创建实例分段数据集是费力的,并且(C )传统的实例分段方法由于对象很小,因此在此任务上执行此任务。因此,本研究目标是:(1)提出使用GIS软件的新型半监督迭代学习方法,(2)提出一种自由盒实例分割方法,(3)提供城市规模的车辆数据集。考虑的迭代学习程序:(1)标记少数车辆,(2)在这些样本上列车,(3)使用模型对整个图像进行分类,(4)将图像预测转换为多边形shapefile,(5 )纠正有错误的一些区域,并将其包含在培训数据中,(6)重复,直到结果令人满意。为了单独的情况,我们考虑了车辆内部和车辆边界,DL模型是U-Net,具有高效网络B7骨架。当移除边框时,车辆内部变为隔离,允许唯一的对象识别。要恢复已删除的1像素边框,我们提出了一种扩展每个预测的简单方法。结果显示与掩模-RCNN(IOU中67%的82%)相比的更好的像素 - 明智的指标。关于每个对象分析,整体准确性,精度和召回大于90%。该管道适用于任何遥感目标,对分段和生成数据集非常有效。
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