Domain adaptive object detection (DAOD) aims to alleviate transfer performance degradation caused by the cross-domain discrepancy. However, most existing DAOD methods are dominated by computationally intensive two-stage detectors, which are not the first choice for industrial applications. In this paper, we propose a novel semi-supervised domain adaptive YOLO (SSDA-YOLO) based method to improve cross-domain detection performance by integrating the compact one-stage detector YOLOv5 with domain adaptation. Specifically, we adapt the knowledge distillation framework with the Mean Teacher model to assist the student model in obtaining instance-level features of the unlabeled target domain. We also utilize the scene style transfer to cross-generate pseudo images in different domains for remedying image-level differences. In addition, an intuitive consistency loss is proposed to further align cross-domain predictions. We evaluate our proposed SSDA-YOLO on public benchmarks including PascalVOC, Clipart1k, Cityscapes, and Foggy Cityscapes. Moreover, to verify its generalization, we conduct experiments on yawning detection datasets collected from various classrooms. The results show considerable improvements of our method in these DAOD tasks. Our code is available on \url{https://github.com/hnuzhy/SSDA-YOLO}.
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我们解决对象检测中的域适应问题,其中在源(带有监控)和目标域(没有监督的域的域名)之间存在显着的域移位。作为广泛采用的域适应方法,自培训教师学生框架(学生模型从教师模型生成的伪标签学习)在目标域中产生了显着的精度增益。然而,由于其偏向源域,它仍然存在从教师产生的大量低质量伪标签(例如,误报)。为了解决这个问题,我们提出了一种叫做自适应无偏见教师(AUT)的自我训练框架,利用对抗的对抗学习和弱强的数据增强来解决域名。具体而言,我们在学生模型中使用特征级的对抗性培训,确保从源和目标域中提取的功能共享类似的统计数据。这使学生模型能够捕获域不变的功能。此外,我们在目标领域的教师模型和两个域上的学生模型之间应用了弱强的增强和相互学习。这使得教师模型能够从学生模型中逐渐受益,而不会遭受域移位。我们展示了AUT通过大边距显示所有现有方法甚至Oracle(完全监督)模型的优势。例如,我们在有雾的城市景观(Clipart1k)上实现了50.9%(49.3%)地图,分别比以前的最先进和甲骨文高9.2%(5.2%)和8.2%(11.0%)
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最近,检测变压器(DETR)是一种端到端对象检测管道,已达到有希望的性能。但是,它需要大规模标记的数据,并遭受域移位,尤其是当目标域中没有标记的数据时。为了解决这个问题,我们根据平均教师框架MTTRANS提出了一个端到端的跨域检测变压器,该变压器可以通过伪标签充分利用对象检测训练中未标记的目标域数据和在域之间的传输知识中的传输知识。我们进一步提出了综合的多级特征对齐方式,以改善由平均教师框架生成的伪标签,利用跨尺度的自我注意事项机制在可变形的DETR中。图像和对象特征在本地,全局和实例级别与基于域查询的特征对齐(DQFA),基于BI级的基于图形的原型对齐(BGPA)和Wine-Wise图像特征对齐(TIFA)对齐。另一方面,未标记的目标域数据伪标记,可用于平均教师框架的对象检测训练,可以导致更好的特征提取和对齐。因此,可以根据变压器的架构对迭代和相互优化的平均教师框架和全面的多层次特征对齐。广泛的实验表明,我们提出的方法在三个领域适应方案中实现了最先进的性能,尤其是SIM10K到CityScapes方案的结果,从52.6地图提高到57.9地图。代码将发布。
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域自适应对象检测(DAOD)旨在改善探测和测试数据来自不同域时的探测器的泛化能力。考虑到显着的域间隙,一些典型方法,例如基于Conscangan的方法,采用中间域来逐步地桥接源域和靶域。然而,基于Conscangan的中间域缺少对象检测的PIX或实例级监控,这导致语义差异。为了解决这个问题,在本文中,我们介绍了具有四种不同的低频滤波器操作的频谱增强一致性(FSAC)框架。通过这种方式,我们可以获得一系列增强数据作为中间域。具体地,我们提出了一种两级优化框架。在第一阶段,我们利用所有原始和增强的源数据来训练对象检测器。在第二阶段,采用增强源和目标数据,具有伪标签来执行预测一致性的自培训。使用均值优化的教师模型用于进一步修改伪标签。在实验中,我们分别评估了我们在单一和复合目标DAOD上的方法,这证明了我们方法的有效性。
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大多数现有的域自适应对象检测方法利用对抗特征对齐,以使模型适应新域。对抗性特征比对的最新进展旨在减少发生的负面影响或负转移的负面影响,因为特征的分布取决于对象类别。但是,通过分析无锚的一阶段检测器的特征,在本文中,我们发现可能发生负转移,因为特征分布取决于对边界框的回归值以及类别的回归值而变化。为了通过解决此问题来获得域的不变性,我们考虑了特征分布的模式,以偏移值为条件。通过一种非常简单有效的调节方法,我们提出了在各种实验环境中实现最新性能的OADA(偏置感知域自适应对象检测器)。此外,通过通过单数值分析分析,我们发现我们的模型可以增强可区分性和可传递性。
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Deep learning has achieved notable success in 3D object detection with the advent of large-scale point cloud datasets. However, severe performance degradation in the past trained classes, i.e., catastrophic forgetting, still remains a critical issue for real-world deployment when the number of classes is unknown or may vary. Moreover, existing 3D class-incremental detection methods are developed for the single-domain scenario, which fail when encountering domain shift caused by different datasets, varying environments, etc. In this paper, we identify the unexplored yet valuable scenario, i.e., class-incremental learning under domain shift, and propose a novel 3D domain adaptive class-incremental object detection framework, DA-CIL, in which we design a novel dual-domain copy-paste augmentation method to construct multiple augmented domains for diversifying training distributions, thereby facilitating gradual domain adaptation. Then, multi-level consistency is explored to facilitate dual-teacher knowledge distillation from different domains for domain adaptive class-incremental learning. Extensive experiments on various datasets demonstrate the effectiveness of the proposed method over baselines in the domain adaptive class-incremental learning scenario.
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无监督域自适应对象检测的自我训练是一项艰巨的任务,其性能在很大程度上取决于伪盒的质量。尽管结果有令人鼓舞,但先前的工作在很大程度上忽略了自训练期间伪箱的不确定性。在本文中,我们提出了一个简单而有效的框架,称为概率教师(PT),该框架旨在从逐渐发展的教师中捕获未标记的目标数据的不确定性,并以互惠互利的方式指导学生学习学生。具体而言,我们建议利用不确定性引导的一致性训练来促进分类适应和本地化适应,而不是通过精心设计的置信度阈值过滤伪盒。此外,我们与定位适应同时进行锚定适应性,因为锚被视为可学习的参数。与此框架一起,我们还提出了一种新颖的熵局灶性损失(EFL),以进一步促进不确定性引导的自我训练。配备了EFL,PT的表现优于所有以前的基线,并实现了新的最先进。
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Domain adaptation aims to bridge the domain shifts between the source and the target domain. These shifts may span different dimensions such as fog, rainfall, etc. However, recent methods typically do not consider explicit prior knowledge about the domain shifts on a specific dimension, thus leading to less desired adaptation performance. In this paper, we study a practical setting called Specific Domain Adaptation (SDA) that aligns the source and target domains in a demanded-specific dimension. Within this setting, we observe the intra-domain gap induced by different domainness (i.e., numerical magnitudes of domain shifts in this dimension) is crucial when adapting to a specific domain. To address the problem, we propose a novel Self-Adversarial Disentangling (SAD) framework. In particular, given a specific dimension, we first enrich the source domain by introducing a domainness creator with providing additional supervisory signals. Guided by the created domainness, we design a self-adversarial regularizer and two loss functions to jointly disentangle the latent representations into domainness-specific and domainness-invariant features, thus mitigating the intra-domain gap. Our method can be easily taken as a plug-and-play framework and does not introduce any extra costs in the inference time. We achieve consistent improvements over state-of-the-art methods in both object detection and semantic segmentation.
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尽管他们最近取得了成功,但在测试时遇到分配变化时,深层神经网络仍会继续表现不佳。最近,许多提出的方法试图通过将模型与推理之前的新分布对齐来解决。由于没有可用的标签,因此需要无监督的目标才能使模型适应观察到的测试数据。在本文中,我们提出了测试时间自我训练(测试):一种技术,该技术在测试时以某些源数据和新的数据分配为输入,并使用学生教师框架来学习不变且强大的表示形式。 。我们发现使用测试适应的模型可以显着改善基线测试时间适应算法。测试可以实现现代领域适应算法的竞争性能,同时自适应时访问5-10倍的数据。我们对两项任务进行了各种基准:对象检测和图像分割,并发现该模型适用于测试。我们发现测试设置了用于测试时间域适应算法的新最新技术。
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Vision-Centric Bird-Eye-View (BEV) perception has shown promising potential and attracted increasing attention in autonomous driving. Recent works mainly focus on improving efficiency or accuracy but neglect the domain shift problem, resulting in severe degradation of transfer performance. With extensive observations, we figure out the significant domain gaps existing in the scene, weather, and day-night changing scenarios and make the first attempt to solve the domain adaption problem for multi-view 3D object detection. Since BEV perception approaches are usually complicated and contain several components, the domain shift accumulation on multi-latent spaces makes BEV domain adaptation challenging. In this paper, we propose a novel Multi-level Multi-space Alignment Teacher-Student ($M^{2}ATS$) framework to ease the domain shift accumulation, which consists of a Depth-Aware Teacher (DAT) and a Multi-space Feature Aligned (MFA) student model. Specifically, DAT model adopts uncertainty guidance to sample reliable depth information in target domain. After constructing domain-invariant BEV perception, it then transfers pixel and instance-level knowledge to student model. To further alleviate the domain shift at the global level, MFA student model is introduced to align task-relevant multi-space features of two domains. To verify the effectiveness of $M^{2}ATS$, we conduct BEV 3D object detection experiments on four cross domain scenarios and achieve state-of-the-art performance (e.g., +12.6% NDS and +9.1% mAP on Day-Night). Code and dataset will be released.
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Domain adaptive detection aims to improve the generalization of detectors on target domain. To reduce discrepancy in feature distributions between two domains, recent approaches achieve domain adaption through feature alignment in different granularities via adversarial learning. However, they neglect the relationship between multiple granularities and different features in alignment, degrading detection. Addressing this, we introduce a unified multi-granularity alignment (MGA)-based detection framework for domain-invariant feature learning. The key is to encode the dependencies across different granularities including pixel-, instance-, and category-levels simultaneously to align two domains. Specifically, based on pixel-level features, we first develop an omni-scale gated fusion (OSGF) module to aggregate discriminative representations of instances with scale-aware convolutions, leading to robust multi-scale detection. Besides, we introduce multi-granularity discriminators to identify where, either source or target domains, different granularities of samples come from. Note that, MGA not only leverages instance discriminability in different categories but also exploits category consistency between two domains for detection. Furthermore, we present an adaptive exponential moving average (AEMA) strategy that explores model assessments for model update to improve pseudo labels and alleviate local misalignment problem, boosting detection robustness. Extensive experiments on multiple domain adaption scenarios validate the superiority of MGA over other approaches on FCOS and Faster R-CNN detectors. Code will be released at https://github.com/tiankongzhang/MGA.
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Object detection typically assumes that training and test data are drawn from an identical distribution, which, however, does not always hold in practice. Such a distribution mismatch will lead to a significant performance drop. In this work, we aim to improve the cross-domain robustness of object detection. We tackle the domain shift on two levels: 1) the image-level shift, such as image style, illumination, etc., and 2) the instance-level shift, such as object appearance, size, etc. We build our approach based on the recent state-of-the-art Faster R-CNN model, and design two domain adaptation components, on image level and instance level, to reduce the domain discrepancy. The two domain adaptation components are based on H-divergence theory, and are implemented by learning a domain classifier in adversarial training manner. The domain classifiers on different levels are further reinforced with a consistency regularization to learn a domain-invariant region proposal network (RPN) in the Faster R-CNN model. We evaluate our newly proposed approach using multiple datasets including Cityscapes, KITTI, SIM10K, etc. The results demonstrate the effectiveness of our proposed approach for robust object detection in various domain shift scenarios.
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域的适应区域对解决许多应用程序遇到的域移位问题发挥了重要作用。由于与现实测试方案中使用的目标数据相比,用于培训的源数据的分布之间的差异是由于培训源数据之间的差异而产生的。在本文中,我们引入了一种新型的多尺度域自适应Yolo(MS-Dayolo)框架,该框架在最近引入的Yolov4对象检测器的不同尺度上采用了多个域自适应路径和相应的域分类器。在我们的基线多尺度Dayolo框架的基础上,我们为域名适应网络(DAN)介绍了三个新颖的深度学习体系结构,它们生成了域,不变性功能。特别是,我们提出了渐进式功能减少(PFR),统一分类器(UC)和集成体系结构。我们使用流行的数据集训练和测试我们提出的DAN体系结构。当使用拟议的MS-Dayolo架构训练Yolov4时,我们的实验显示了对象检测性能的显着改善,并在对目标数据进行自动驾驶应用程序中进行测试时。此外,MS-Dayolo框架相对于更快的R-CNN解决方案,在提供可比的对象检测性能的同时,实现了实时速度的数量级改进。
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在本文中,我们在半监督对象检测(SSOD)中深入研究了两种关键技术,即伪标记和一致性训练。我们观察到,目前,这两种技术忽略了对象检测的一些重要特性,从而阻碍了对未标记数据的有效学习。具体而言,对于伪标记,现有作品仅关注分类得分,但不能保证伪框的本地化精度;为了保持一致性训练,广泛采用的随机训练只考虑了标签级的一致性,但错过了功能级别的训练,这在确保尺度不变性方面也起着重要作用。为了解决嘈杂的伪箱所产生的问题,我们设计了包括预测引导的标签分配(PLA)和正面验证一致性投票(PCV)的嘈杂伪盒学习(NPL)。 PLA依赖于模型预测来分配标签,并使甚至粗糙的伪框都具有鲁棒性。 PCV利用积极建议的回归一致性来反映伪盒的本地化质量。此外,在一致性训练中,我们提出了包括标签和特征水平一致性的机制的多视图尺度不变学习(MSL),其中通过将两个图像之间的移动特征金字塔对准具有相同内容但变化量表的变化来实现特征一致性。在可可基准测试上,我们的方法称为伪标签和一致性训练(PSECO),分别以2.0、1.8、2.0分的1%,5%和10%的标签比优于SOTA(软教师)。它还显着提高了SSOD的学习效率,例如,PSECO将SOTA方法的训练时间减半,但实现了更好的性能。代码可从https://github.com/ligang-cs/pseco获得。
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人搜索是一项具有挑战性的任务,旨在实现共同的行人检测和人重新识别(REID)。以前的作品在完全和弱监督的设置下取得了重大进步。但是,现有方法忽略了人搜索模型的概括能力。在本文中,我们采取了进一步的步骤和现在的域自适应人员搜索(DAPS),该搜索旨在将模型从标记的源域概括为未标记的目标域。在这种新环境下出现了两个主要挑战:一个是如何同时解决检测和重新ID任务的域未对准问题,另一个是如何在目标域上训练REID子任务而不可靠的检测结果。为了应对这些挑战,我们提出了一个强大的基线框架,并使用两个专用设计。 1)我们设计一个域对齐模块,包括图像级和任务敏感的实例级别对齐,以最大程度地减少域差异。 2)我们通过动态聚类策略充分利用未标记的数据,并使用伪边界框来支持目标域上的REID和检测训练。通过上述设计,我们的框架在MAP中获得了34.7%的地图,而PRW数据集的TOP-1则达到80.6%,超过了直接转移基线的大幅度。令人惊讶的是,我们无监督的DAPS模型的性能甚至超过了一些完全和弱监督的方法。该代码可在https://github.com/caposerenity/daps上找到。
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在域移位下,跨域几个射击对象检测旨在通过一些注释的目标数据适应目标域中的对象检测器。存在两个重大挑战:(1)高度不足的目标域数据; (2)潜在的过度适应和误导性是由不当放大的目标样本而没有任何限制引起的。为了应对这些挑战,我们提出了一种由两个部分组成的自适应方法。首先,我们提出了一种自适应优化策略,以选择类似于目标样本的增强数据,而不是盲目增加数量。具体而言,我们过滤了增强的候选者,这些候选者在一开始就显着偏离了目标特征分布。其次,为了进一步释放数据限制,我们提出了多级域感知数据增强,以增加增强数据的多样性和合理性,从而利用了跨图像前景 - 背景混合物。实验表明,所提出的方法在多个基准测试中实现了最先进的性能。
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Unsupervised source-free domain adaptation methods aim to train a model to be used in the target domain utilizing the pretrained source-domain model and unlabeled target-domain data, where the source data may not be accessible due to intellectual property or privacy issues. These methods frequently utilize self-training with pseudo-labeling thresholded by prediction confidence. In a source-free scenario, only supervision comes from target data, and thresholding limits the contribution of the self-training. In this study, we utilize self-training with a mean-teacher approach. The student network is trained with all predictions of the teacher network. Instead of thresholding the predictions, the gradients calculated from the pseudo-labels are weighted based on the reliability of the teacher's predictions. We propose a novel method that uses proxy-based metric learning to estimate reliability. We train a metric network on the encoder features of the teacher network. Since the teacher is updated with the moving average, the encoder feature space is slowly changing. Therefore, the metric network can be updated in training time, which enables end-to-end training. We also propose a metric-based online ClassMix method to augment the input of the student network where the patches to be mixed are decided based on the metric reliability. We evaluated our method in synthetic-to-real and cross-city scenarios. The benchmarks show that our method significantly outperforms the existing state-of-the-art methods.
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语义分割在广泛的计算机视觉应用中起着基本作用,提供了全球对图像​​的理解的关键信息。然而,最先进的模型依赖于大量的注释样本,其比在诸如图像分类的任务中获得更昂贵的昂贵的样本。由于未标记的数据替代地获得更便宜,因此无监督的域适应达到了语义分割社区的广泛成功并不令人惊讶。本调查致力于总结这一令人难以置信的快速增长的领域的五年,这包含了语义细分本身的重要性,以及将分段模型适应新环境的关键需求。我们提出了最重要的语义分割方法;我们对语义分割的域适应技术提供了全面的调查;我们揭示了多域学习,域泛化,测试时间适应或无源域适应等较新的趋势;我们通过描述在语义细分研究中最广泛使用的数据集和基准测试来结束本调查。我们希望本调查将在学术界和工业中提供具有全面参考指导的研究人员,并有助于他们培养现场的新研究方向。
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While deep learning methods hitherto have achieved considerable success in medical image segmentation, they are still hampered by two limitations: (i) reliance on large-scale well-labeled datasets, which are difficult to curate due to the expert-driven and time-consuming nature of pixel-level annotations in clinical practices, and (ii) failure to generalize from one domain to another, especially when the target domain is a different modality with severe domain shifts. Recent unsupervised domain adaptation~(UDA) techniques leverage abundant labeled source data together with unlabeled target data to reduce the domain gap, but these methods degrade significantly with limited source annotations. In this study, we address this underexplored UDA problem, investigating a challenging but valuable realistic scenario, where the source domain not only exhibits domain shift~w.r.t. the target domain but also suffers from label scarcity. In this regard, we propose a novel and generic framework called ``Label-Efficient Unsupervised Domain Adaptation"~(LE-UDA). In LE-UDA, we construct self-ensembling consistency for knowledge transfer between both domains, as well as a self-ensembling adversarial learning module to achieve better feature alignment for UDA. To assess the effectiveness of our method, we conduct extensive experiments on two different tasks for cross-modality segmentation between MRI and CT images. Experimental results demonstrate that the proposed LE-UDA can efficiently leverage limited source labels to improve cross-domain segmentation performance, outperforming state-of-the-art UDA approaches in the literature. Code is available at: https://github.com/jacobzhaoziyuan/LE-UDA.
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无监督的域适应性(UDA)旨在使标记的源域的模型适应未标记的目标域。现有的基于UDA的语义细分方法始终降低像素级别,功能级别和输出级别的域移动。但是,几乎所有这些都在很大程度上忽略了上下文依赖性,该依赖性通常在不同的领域共享,从而导致较不怀疑的绩效。在本文中,我们提出了一个新颖的环境感知混音(camix)框架自适应语义分割的框架,该框架以完全端到端的可训练方式利用了上下文依赖性的这一重要线索作为显式的先验知识,以增强对适应性的适应性目标域。首先,我们通过利用积累的空间分布和先前的上下文关系来提出上下文掩盖的生成策略。生成的上下文掩码在这项工作中至关重要,并将指导三个不同级别的上下文感知域混合。此外,提供了背景知识,我们引入了重要的一致性损失,以惩罚混合学生预测与混合教师预测之间的不一致,从而减轻了适应性的负面转移,例如早期绩效降级。广泛的实验和分析证明了我们方法对广泛使用的UDA基准的最新方法的有效性。
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