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Adaptive feature alignment network with noise suppression for cross-domain object detection 具有噪声抑制功能的自适应特征对齐网络,用于跨域物体检测
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128789
Wei Jiang , Yujie Luan , Kewei Tang , Lijun Wang , Nan Zhang , Huiling Chen , Heng Qi
Recently, unsupervised domain adaptive object detection methods have been proposed to address the challenge of detecting objects across different domains without labeled data in the target domain. These methods focus on aligning features either at the image level or the instance level. However, due to the absence of annotations in the target domain, existing approaches encounter challenges such as background noise at the image level and prototype aggregation noise at the instance level. To tackle these issues, we introduce a novel adaptive feature alignment network for cross-domain object detection, comprising two key modules. Firstly, we present an adaptive foreground-aware attention module equipped with a set of learnable part prototypes for image-level alignment. This module dynamically generates foreground attention maps, enabling the model to prioritize foreground features, thus reducing the impact of background noise. Secondly, we propose a class-aware prototype alignment module incorporating an optimal transport algorithm for instance-level alignment. This module mitigates the adverse effects of region–prototype aggregation noise by aligning prototypes with instances based on their semantic similarities. By integrating these two modules, our approach achieves better image-level and instance-level feature alignment. Extensive experiments across three challenging scenarios demonstrate the effectiveness of our method, outperforming state-of-the-art approaches in terms of object detection performance.
最近,有人提出了无监督领域自适应物体检测方法,以应对在目标领域没有标记数据的情况下跨不同领域检测物体的挑战。这些方法的重点是在图像层或实例层对齐特征。然而,由于目标域中没有注释,现有方法会遇到一些挑战,如图像级的背景噪声和实例级的原型聚合噪声。为了解决这些问题,我们引入了一种用于跨域对象检测的新型自适应特征对齐网络,该网络由两个关键模块组成。首先,我们提出了一个自适应前景感知注意力模块,该模块配备了一套可学习的部件原型,用于图像级对齐。该模块可动态生成前景注意图,使模型能够优先考虑前景特征,从而降低背景噪声的影响。其次,我们提出了一种类感知原型对齐模块,其中包含一种用于实例级对齐的优化传输算法。该模块根据语义相似性将原型与实例对齐,从而减轻了区域原型聚合噪声的不利影响。通过整合这两个模块,我们的方法实现了更好的图像级和实例级特征配准。在三个具有挑战性的场景中进行的广泛实验证明了我们方法的有效性,在物体检测性能方面优于最先进的方法。
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引用次数: 0
A pseudo-3D coarse-to-fine architecture for 3D medical landmark detection 用于三维医学地标检测的伪三维粗到细架构
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128782
Li Cui , Boyan Liu , Guikun Xu , Jixiang Guo , Wei Tang , Tao He
The coarse-to-fine architecture is a benchmark method designed to enhance the accuracy of 3D medical landmark detection. However, incorporating 3D convolutional neural networks into the coarse-to-fine architecture leads to a significant increase in model parameters, making it costly for deployment in clinical applications. This paper introduces a novel lightweight pseudo-3D coarse-to-fine architecture, consisting of a Plane-wise Attention Pseudo-3D (PA-P3D) model and a Spatial Separation Pseudo-3D (SS-P3D) model. The PA-P3D inherits the lightweight structure of the general pseudo-3D and enhances cross-plane feature interaction in 3D medical images. On the other hand, the SS-P3D replaces the 3D model with three spatially separated 2D models to simultaneously detect 2D landmarks on axial, sagittal, and coronal planes. In comparison to the conventional coarse-to-fine architecture, the proposed method requires only approximately a quarter of the model parameters (60% reduced by PA-P3D and 40% reduced by SS-P3D) while simultaneously improving landmark detection performance. Experimental results demonstrate the effectiveness of the proposed method, achieving state-of-the-art performance on both a public dataset for mandibular molar landmark detection and a private dataset for cephalometric landmark detection. Overall, this paper highlights the potential of the coarse-to-fine method for cost-effective model deployment, thanks to its lightweight model structure.
从粗到细架构是一种基准方法,旨在提高三维医学地标检测的准确性。然而,将三维卷积神经网络纳入粗到细架构会导致模型参数大幅增加,使其在临床应用中部署成本高昂。本文介绍了一种新型轻量级伪三维粗到细架构,由平面注意力伪三维(PA-P3D)模型和空间分离伪三维(SS-P3D)模型组成。PA-P3D 继承了一般伪三维模型的轻量级结构,增强了三维医学图像中的跨平面特征交互。另一方面,SS-P3D 用三个空间分离的二维模型取代了三维模型,可同时检测轴向、矢状和冠状面上的二维地标。与传统的从粗到细结构相比,所提出的方法只需要大约四分之一的模型参数(PA-P3D 减少了 60%,SS-P3D 减少了 40%),同时还提高了地标检测性能。实验结果证明了所提方法的有效性,在下颌臼齿地标检测的公共数据集和头面部地标检测的私有数据集上都达到了最先进的性能。总之,本文强调了从粗到细方法因其轻量级模型结构而在经济高效地部署模型方面所具有的潜力。
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引用次数: 0
Imperceptible rhythm backdoor attacks: Exploring rhythm transformation for embedding undetectable vulnerabilities on speech recognition 不可察觉的节奏后门攻击:探索在语音识别中嵌入不可察觉漏洞的节奏变换
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128779
Wenhan Yao , Jiangkun Yang , Yongqiang He , Jia Liu , Weiping Wen
Speech recognition is an essential start ring of human–computer interaction. Recently, deep learning models have achieved excellent success in this task. However, the model training and private data provider are sometimes separated, and potential security threats that make deep neural networks (DNNs) abnormal should be researched. In recent years, the typical threats, such as backdoor attacks, have been analysed in speech recognition systems. The existing backdoor methods are based on data poisoning. The attacker adds some incorporated changes to benign speech spectrograms or changes the speech components, such as pitch and timbre. As a result, the poisoned data can be detected by human hearing or automatic deep algorithms. To improve the stealthiness of data poisoning, we propose a non-neural and fast algorithm called Random Spectrogram Rhythm Transformation (RSRT) in this paper. The algorithm combines four steps to generate stealthy poisoned utterances. From the perspective of rhythm component transformation, our proposed trigger stretches or squeezes the mel spectrograms and recovers them back to signals. The operation keeps timbre and content unchanged for good stealthiness. Our experiments are conducted on two kinds of speech recognition tasks, including testing the stealthiness of poisoned samples by speaker verification and automatic speech recognition. The results show that our method is effective and stealthy. The rhythm trigger needs a low poisoning rate and gets a very high attack success rate.
语音识别是人机交互的重要起点。最近,深度学习模型在这项任务中取得了巨大成功。然而,模型训练和私人数据提供有时是分离的,因此应研究使深度神经网络(DNN)异常的潜在安全威胁。近年来,人们分析了语音识别系统中的典型威胁,如后门攻击。现有的后门方法基于数据中毒。攻击者在良性语音频谱图中添加一些合并的变化,或改变语音成分,如音高和音色。因此,中毒数据可被人类听觉或自动深度算法检测出来。为了提高数据中毒的隐蔽性,我们在本文中提出了一种名为随机频谱节奏变换(RSRT)的非神经快速算法。该算法结合四个步骤生成隐蔽的中毒语料。从节奏成分转换的角度来看,我们提出的触发器会拉伸或挤压熔谱图,并将其恢复为信号。该操作保持音色和内容不变,以达到良好的隐蔽性。我们在两种语音识别任务中进行了实验,包括通过说话人验证和自动语音识别来测试中毒样本的隐蔽性。结果表明,我们的方法既有效又隐蔽。节奏触发器只需较低的中毒率,就能获得很高的攻击成功率。
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引用次数: 0
Perceptual metric for face image quality with pixel-level interpretability 具有像素级可解释性的人脸图像质量感知指标
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128780
Byungho Jo , In Kyu Park , Sungeun Hong
This paper tackles the shortcomings of image evaluation metrics in evaluating facial image quality. Conventional metrics do neither accurately reflect the unique attributes of facial images nor correspond with human visual perception. To address these issues, we introduce a novel metric designed specifically for faces, utilizing a learning-based adversarial framework. This framework comprises a generator for simulating face restoration and a discriminator for quality evaluation. Drawing inspiration from facial neuroscience studies, our metric emphasizes the importance of primary facial features, acknowledging that minor changes in the eyes, nose, and mouth can significantly impact perception. Another key limitation of existing image evaluation metrics is their focus on numerical values at the image level, without providing insight into how different areas of the image contribute to the overall assessment. Our proposed metric offers interpretability regarding how each region of the image is evaluated. Comprehensive experimental results confirm that our face-specific metric surpasses traditional general image quality assessment metrics for facial images, including both full-reference and no-reference methods. The code and models are available at https://github.com/AIM-SKKU/IFQA.
本文探讨了图像评价指标在评价面部图像质量方面的不足。传统指标既不能准确反映面部图像的独特属性,也不符合人类的视觉感知。为了解决这些问题,我们利用基于学习的对抗框架,引入了一种专为人脸设计的新型指标。该框架包括一个用于模拟人脸还原的生成器和一个用于质量评估的判别器。从面部神经科学研究中汲取灵感,我们的指标强调主要面部特征的重要性,承认眼睛、鼻子和嘴巴的微小变化都会对感知产生重大影响。现有图像评价指标的另一个主要局限是只关注图像层面的数值,而无法深入了解图像的不同区域对整体评估的贡献。我们提出的指标可以解释如何对图像的每个区域进行评估。全面的实验结果证实,我们针对面部的指标超越了传统的面部图像质量评估指标,包括全参考和无参考方法。代码和模型可在 https://github.com/AIM-SKKU/IFQA 上获取。
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引用次数: 0
Dual-referenced assistive network for action quality assessment 行动质量评估双参照辅助网络
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128786
Keyi Huang, Yi Tian, Chen Yu, Yaping Huang
Action quality assessment (AQA) aims to evaluate the performing quality of a specific action. It is a challenging task as it requires to identify the subtle differences between the videos containing the same action. Most of existing AQA methods directly adopt a pretrained network designed for other tasks to extract video features, which are too coarse to describe fine-grained details of action quality. In this paper, we propose a novel Dual-Referenced Assistive (DuRA) network to polish original coarse-grained features into fine-grained quality-oriented representations. Specifically, we introduce two levels of referenced assistants to highlight the discriminative quality-related contents by comparing a target video and the referenced objects, instead of obtrusively estimating the quality score from an individual video. Firstly, we design a Rating-guided Attention module, which takes advantage of a series of semantic-level referenced assistants to acquire implicit hierarchical semantic knowledge and progressively emphasize quality-focused features embedded in original inherent information. Subsequently, we further design a couple of Consistency Preserving constraints, which introduce a set of individual-level referenced assistants to further eliminate score-unrelated information through more detailed comparisons of differences between actions. The experiments show that our proposed method achieves promising performance on the AQA-7 and MTL-AQA datasets.
动作质量评估(AQA)旨在评价特定动作的执行质量。这是一项具有挑战性的任务,因为它需要识别包含相同动作的视频之间的细微差别。现有的 AQA 方法大多直接采用为其他任务设计的预训练网络来提取视频特征,这种方法过于粗糙,无法描述动作质量的细微差别。在本文中,我们提出了一种新颖的双参照辅助(DuRA)网络,将原始的粗粒度特征打磨成面向质量的细粒度表示。具体来说,我们引入了两级参考助手,通过比较目标视频和参考对象来突出与质量相关的判别内容,而不是从单个视频中估算质量分数。首先,我们设计了一个 "评分引导关注 "模块,该模块利用一系列语义级参考助手来获取隐含的分层语义知识,并逐步强调蕴含在原始固有信息中的质量相关特征。随后,我们进一步设计了几个一致性保持约束,引入了一组个体级参考助手,通过更详细地比较行动之间的差异,进一步消除与分数无关的信息。实验表明,我们提出的方法在 AQA-7 和 MTL-AQA 数据集上取得了可喜的性能。
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引用次数: 0
A survey of deep learning algorithms for colorectal polyp segmentation 用于结直肠息肉分割的深度学习算法调查
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-28 DOI: 10.1016/j.neucom.2024.128767
Sheng Li , Yipei Ren , Yulin Yu , Qianru Jiang , Xiongxiong He , Hongzhang Li
Early detecting and removing cancerous colorectal polyps can effectively reduce the risk of colorectal cancer. Computer intelligent segmentation techniques (CIST) can improve the detection rate of polyp by drawing the boundaries of colorectal polyps clearly and completely. Four challenges that encountered in deep learning methods for the task of colorectal polyp segmentation are considered, including the limitations of classical deep learning (DL) algorithms, the impact of data set quantity and quality, the diversity of intrinsic characteristics of lesions and the heterogeneity of images in different center datasets. The improved DL algorithms for intelligent polyp segmentation are detailed along with the key neural network modules being designed to deal with above challenges. In addition, the public and private datasets of colorectal polyp images and videos are summarized, respectively. At the end of this paper, the development trends of polyp segmentation algorithm based on deep learning are discussed.
早期发现并切除癌变的大肠息肉可以有效降低罹患大肠癌的风险。计算机智能分割技术(CIST)可以清晰、完整地描绘出大肠息肉的边界,从而提高息肉的检出率。本文探讨了深度学习方法在大肠息肉分割任务中遇到的四个挑战,包括经典深度学习(DL)算法的局限性、数据集数量和质量的影响、病变内在特征的多样性以及不同中心数据集中图像的异质性。详细介绍了用于智能息肉分割的改进型 DL 算法,以及为应对上述挑战而设计的关键神经网络模块。此外,还分别总结了结直肠息肉图像和视频的公共数据集和私有数据集。本文最后讨论了基于深度学习的息肉分割算法的发展趋势。
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引用次数: 0
Implicit expression recognition enhanced table-filling for aspect sentiment triplet extraction 隐式表达识别增强了表格填充功能,可用于方面情感三元组提取
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-26 DOI: 10.1016/j.neucom.2024.128776
Yanbo Li , Qing He , Nisuo Du , Qingni He
Aspect sentiment triplet extraction (ASTE) is a challenging task in aspect-based sentiment analysis (ABSA), involving the identification of aspect terms, opinion terms, and their corresponding sentiment polarities within comments to form triplets. The emergence of more realistic DMASTE datasets, featuring diverse domains, implicit aspect terms, and longer comments, poses challenges for existing methods. In particular, these methods struggle with recognizing implicit expressions effectively and capturing sufficient information. To overcome these hurdles, we propose an implicit expression recognition enhanced table-filling (IERET) method. This approach integrates modeling of overall implicit expression in sentences and employs a bidirectional information aggregation module to capture word pair information comprehensively. During the decoding process, a table-filling method accurately delineates aspect-opinion pair boundaries. Experimental results across in-domain, single-source cross-domain, and multi-source cross-domain on the DMASTE dataset demonstrate that our proposed IERET method achieves state-of-the-art performance.
方面情感三元组提取(ASTE)是基于方面的情感分析(ABSA)中一项具有挑战性的任务,它涉及识别评论中的方面术语、观点术语及其相应的情感极性以形成三元组。更真实的 DMASTE 数据集具有不同的领域、隐含的方面术语和更长的评论,这些数据集的出现给现有方法带来了挑战。特别是,这些方法在有效识别隐式表达和捕获足够信息方面存在困难。为了克服这些障碍,我们提出了一种隐式表达识别增强填表(IERET)方法。这种方法整合了句子中整体隐含表达的建模,并采用双向信息聚合模块来全面捕捉词对信息。在解码过程中,填表方法能准确划分出方面-观点对的边界。在 DMASTE 数据集上进行的域内、单源跨域和多源跨域实验结果表明,我们提出的 IERET 方法达到了最先进的性能。
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引用次数: 0
HADT: Image super-resolution restoration using Hybrid Attention-Dense Connected Transformer Networks HADT:使用混合注意力密集连接变压器网络进行图像超分辨率修复
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-26 DOI: 10.1016/j.neucom.2024.128790
Ying Guo , Chang Tian , Jie Liu , Chong Di , Keqing Ning
Image super-resolution (SR) plays a vital role in vision tasks, in which Transformer-based methods outperform conventional convolutional neural networks. Existing work usually uses residual linking to improve the performance, but this type of linking provides limited information transfer within the block. Also, existing work usually restricts the self-attention computation to a single window to improve feature extraction. This means transformer-based networks can only use feature information within a limited spatial range. To handle the challenge, this paper proposes a novel Hybrid Attention-Dense Connected Transformer Network (HADT) to utilize the potential feature information better. HADT is constructed by stacking an attentional transformer block (ATB), which contains an Effective Dense Transformer Block (EDTB) and a Hybrid Attention Block (HAB). EDTB combines dense connectivity and swin-transformer to enhance feature transfer and improve model representation, and meanwhile, HAB is used for cross-window information interaction and joint modeling of features for better visualization. Based on the experiments, our method is effective on SR tasks with magnification factors of 2, 3, and 4. For example, using the Urban100 dataset in an experiment with an amplification factor of 4 our method has a PSNR value that is 0.15 dB higher than the previous method and reconstructs a more detailed texture.
图像超分辨率(SR)在视觉任务中起着至关重要的作用,在这方面,基于变换器的方法优于传统的卷积神经网络。现有研究通常使用残差链接来提高性能,但这种链接方式在块内提供的信息传递有限。此外,现有研究通常将自注意计算限制在单个窗口内,以提高特征提取效果。这意味着基于变压器的网络只能使用有限空间范围内的特征信息。为了应对这一挑战,本文提出了一种新颖的混合注意力密集连接变压器网络(HADT),以更好地利用潜在的特征信息。HADT 是通过堆叠注意力变压器块(ATB)构建的,ATB 包含一个有效密集变压器块(EDTB)和一个混合注意力块(HAB)。EDTB 结合了密集连接和swin-transformer,以增强特征转移和改进模型表示,同时,HAB 用于跨窗口信息交互和特征联合建模,以获得更好的可视化效果。根据实验结果,我们的方法对放大系数为 2、3 和 4 的 SR 任务非常有效。例如,在放大系数为 4 的实验中,使用 Urban100 数据集,我们的方法的 PSNR 值比之前的方法高出 0.15 dB,而且重建的纹理更加细致。
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引用次数: 0
SDDA: A progressive self-distillation with decoupled alignment for multimodal image–text classification SDDA:用于多模态图像-文本分类的解耦对齐渐进式自馏分法
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-26 DOI: 10.1016/j.neucom.2024.128794
Xiaohao Chen , Qianjun Shuai , Feng Hu , Yongqiang Cheng
Multimodal image–text classification endeavors to deduce the correct category based on the information encapsulated in image–text pairs. Despite the commendable performance achieved by current image–text methodologies, the intrinsic multimodal heterogeneity persists as a challenge, with the contributions from diverse modalities exhibiting considerable variance. In this study, we address this issue by introducing a novel decoupled multimodal Self-Distillation (SDDA) approach, aimed at facilitating fine-grained alignment of shared and private features of image–text features in a low-dimensional space, thereby reducing information redundancy. Specifically, each modality representation is decoupled in an autoregressive manner into two segments within a modality-irrelevant/exclusive space. SDDA imparts additional knowledge transfer to each decoupled segment via self-distillation, while also offering flexible, richer multimodal knowledge supervision for unimodal features. Multimodal classification experiments conducted on two publicly available benchmark datasets verified the efficacy of the algorithm, demonstrating that SDDA surpasses the state-of-the-art baselines.
多模态图像文本分类致力于根据图像文本对所包含的信息推断出正确的类别。尽管目前的图像-文本方法取得了值得称道的性能,但内在的多模态异质性仍然是一个挑战,来自不同模态的贡献表现出相当大的差异。在本研究中,我们通过引入一种新颖的解耦多模态自蒸馏(SDDA)方法来解决这一问题,该方法旨在促进图像-文本特征的共享特征和私有特征在低维空间中的精细匹配,从而减少信息冗余。具体来说,每个模态表示以自回归的方式解耦为模态无关/专属空间内的两个片段。SDDA 通过自馏分将额外的知识转移到每个解耦段,同时还为单模态特征提供灵活、更丰富的多模态知识监督。在两个公开的基准数据集上进行的多模态分类实验验证了该算法的有效性,证明 SDDA 超越了最先进的基准。
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引用次数: 0
Industrial and medical anomaly detection through cycle-consistent adversarial networks 通过循环一致性对抗网络进行工业和医疗异常检测
IF 5.5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Pub Date : 2024-10-26 DOI: 10.1016/j.neucom.2024.128762
Arnaud Bougaham , Valentin Delchevalerie , Mohammed El Adoui , Benoît Frénay
In this study, a new Anomaly Detection (AD) approach for industrial and medical images is proposed. This method leverages the theoretical strengths of unsupervised learning and the data availability of both normal and abnormal classes. Indeed, the AD is often formulated as an unsupervised task, implying only normal images during training. These normal images are devoted to be reconstructed through an autoencoder architecture, for instance. However, the information contained in abnormal data, when available, is also valuable for this reconstruction. The model would be able to identify its weaknesses by also learning how to transform an abnormal image into a normal one. This abnormal-to-normal reconstruction helps the entire model to learn better than a single normal-to-normal reconstruction. To be able to exploit abnormal images, the proposed method uses Cycle-Generative Adversarial Networks (Cycle-GAN) for (ab)normal-to-normal translation. After an input image has been reconstructed by the normal generator, an anomaly score quantifies the differences between the input and its reconstruction. Based on a threshold set to satisfy a business quality constraint, the input image is then flagged as normal or not. The proposed method is evaluated on industrial and medical datasets. The results demonstrate accurate performance with a zero false negative constraint compared to state-of-the-art methods. Quantitatively, our method reaches an accuracy under a zero false negative constraint of 79.89%, representing an improvement of about 17% compared to competitors. The code is available at https://github.com/ValDelch/CycleGANS-AnomalyDetection.
本研究针对工业和医疗图像提出了一种新的异常检测(AD)方法。该方法利用了无监督学习的理论优势以及正常和异常类别的数据可用性。事实上,AD 通常被表述为一项无监督任务,这意味着在训练过程中只有正常图像。例如,这些正常图像致力于通过自动编码器架构进行重建。然而,异常数据中包含的信息(如果有的话)对这种重建也很有价值。通过学习如何将异常图像转化为正常图像,模型就能找出自己的弱点。与单一的正常到正常的重构相比,这种异常到正常的重构有助于整个模型更好地学习。为了能够利用异常图像,建议的方法使用循环生成对抗网络(Cycle-GAN)进行(非)正常到正常的转换。输入图像经正常生成器重建后,异常得分将量化输入图像与其重建图像之间的差异。然后,根据为满足业务质量约束而设定的阈值,将输入图像标记为正常或不正常。我们在工业和医疗数据集上对所提出的方法进行了评估。结果表明,与最先进的方法相比,该方法具有准确的性能和零假阴性约束。从数量上看,我们的方法在零假否定约束下的准确率达到了 79.89%,与竞争对手相比提高了约 17%。代码见 https://github.com/ValDelch/CycleGANS-AnomalyDetection。
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