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Quantization-Based 3D-CNNs Through Circular Gradual Unfreezing for DeepFake Detection 基于量化的3d - cnn循环渐进解冻深度假检测
Pub Date : 2025-04-28 DOI: 10.1109/TAI.2025.3564903
Emmanuel Pintelas;Ioannis E. Livieris;Panagiotis E. Pintelas
In the dynamic domain of synthetic media, deepfakes challenge the trust in digital communication. The identification of manipulated content is essential to ensure the authenticity of shared information. Recent advances in deepfake detection have focused on developing sophisticated convolutional neural network (CNN)-based approaches. However, these approaches remain anchored within the continuous feature space, potentially missing manipulative signatures that might be more salient in a discrete domain. For this task, we propose a new strategy that combines insights from both continuous and discrete spaces for enhanced deepfake detection. Our hypothesis is that deepfakes may lie closer to a discrete space, potentially revealing hidden patterns that are not evident in continuous representations. In addition, we propose a new gradual-unfreezing technique, employed in the proposed framework to slowly adapt the network parameters to align with the new combined representation. Via comprehensive experimentation, the efficiency of the proposed approach is highlighted, in comparison with state-of-the-art (SoA) deepfake detection strategies.
在合成媒体的动态领域,深度造假对数字传播的信任构成了挑战。识别被操纵的内容对于确保共享信息的真实性至关重要。深度假检测的最新进展集中在开发复杂的基于卷积神经网络(CNN)的方法上。然而,这些方法仍然固定在连续特征空间中,可能会丢失在离散域中可能更加突出的操纵签名。对于这项任务,我们提出了一种新的策略,该策略结合了来自连续和离散空间的见解,以增强深度伪造检测。我们的假设是,深度造假可能更接近离散空间,潜在地揭示出在连续表示中不明显的隐藏模式。此外,我们提出了一种新的渐进解冻技术,该技术在所提出的框架中使用,以缓慢地调整网络参数以与新的组合表示对齐。通过全面的实验,与最先进的(SoA)深度假检测策略相比,该方法的效率得到了强调。
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引用次数: 0
A Multitropical Cyclone Trajectory Prediction Method Based on Density Maps With Memory and Data Fusion 基于密度图记忆和数据融合的多热带气旋轨迹预测方法
Pub Date : 2025-04-28 DOI: 10.1109/TAI.2025.3564911
Dongfang Ma;Zhaoyang Ma;Chengying Wu;Jianmin Lin
Tropical cyclones (TCs) are destructive weather systems, and the accurate prediction of the trajectory of TCs is crucial. Previous studies have focused mainly on trajectory prediction for individual TCs, which cannot take into account the interaction between different TCs, affecting the prediction performance. To address this problem, this study proposed an innovative method for multi-TC trajectory prediction based on a density map. Instead of predicting the location of a TC directly, the article first predicts the density map of a sea area, and then obtain TC centers from the predicted density maps. In the first step, a relation extraction module (REM) is proposed in order to analyze the interaction between multiple TCs. Further, a 3-D cloud feature extraction module was designed to enhance the ability to use 3-D cloud structural information on TCs via feature extraction and the fusion of density maps, satellite images, and environmental data. In addition, a long short-term memory (LSTM) fusion module was designed to adaptively select important historical information, which improves the ability to extract long-term spatiotemporal dependencies. In the second step, those density map pixels with extreme values are identified as TC centers. The proposed method was verified by experiments using Gridsat, IBTrACS, and ERA5 datasets. The results show that the mean distance error of TC trajectory prediction is reduced by 10.0%, 10.7%, 10.5%, and 11.7% for overall performance, and 21.5%, 18.0%, 19.1%, and 19.8% for multi-TC scenario in the 6-, 12-, 18-, and 24-h predictions compared with state-of-the-art prediction models.
热带气旋是一种具有破坏性的天气系统,对其运动轨迹的准确预测至关重要。以往的研究主要集中在单个tc的轨迹预测上,没有考虑到不同tc之间的相互作用,影响了预测效果。针对这一问题,本文提出了一种基于密度图的多tc轨迹预测方法。本文不是直接预测TC的位置,而是先预测一个海域的密度图,然后从预测的密度图中得到TC的中心。首先,提出了关系提取模块(REM)来分析多个tc之间的交互。此外,设计了三维云特征提取模块,通过特征提取和密度图、卫星图像和环境数据的融合,增强了在tc上使用三维云结构信息的能力。此外,设计了长短期记忆融合模块,自适应选择重要历史信息,提高了提取长期时空依赖关系的能力。第二步,将具有极值的密度图像素识别为TC中心。利用Gridsat、IBTrACS和ERA5数据集进行了实验验证。结果表明,在6、12、18和24 h的预测中,TC轨迹预测的平均距离误差与现有预测模型相比分别降低了10.0%、10.7%、10.5%和11.7%,在多TC场景下的平均距离误差分别降低了21.5%、18.0%、19.1%和19.8%。
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引用次数: 0
ECG_DEEPNet: A Novel Approach for Delineation and Classification of Electrocardiogram Signal Based on Ensemble Deep-Learning ECG_DEEPNet:一种基于集成深度学习的心电图信号描述与分类新方法
Pub Date : 2025-04-25 DOI: 10.1109/TAI.2025.3564603
Neenu Sharma;Deepak Joshi
The advancements in telehealth monitoring technology have enabled the collection of vast quantities of electro-physiological signals, including the electrocardiogram (ECG) which contains critical diagnostic information about cardiac diseases. There are two main key challenges in the automatic classification of cardiac rhythms. First, addressing the specific characteristics of irregular heartbeats is critical for accurate classification. Second, the low frequency of ECG signals combined with noise interference makes it particularly difficult to efficiently detect abnormal electrical activity in the heart. To solve this issue, this article proposes an ensemble deep-learning model, ECG_DEEPNet architecture to enhance the delineation of ECG signals with improved accuracy for better diagnosis in telemedicine monitoring systems. The presented technique consists of a feature extraction stage using a convolutional neural network (CNN) and a sequence processing stage using a combination of gated recurrent units (GRU) and bidirectional long short-term memory (BiLSTM) networks. The proposed method is divided into four parts: first, the signal preprocessing, second waveform segmentation, third classification of ECG signals and lastly results are evaluated on the proposed model. The proposed technique was tested and trained using standard Lobachevsky University Electrocardiography Database (LUDB) and QT database (QTDB) containing annotation of a waveform for accurate classification of ECG wave components. The presented technique shows the average accuracy of 99.82%, 98.50%, and 97.42% for QRS, P, and T on the QTDB database, and 99.96%, 98.82%, and 99.47% on LUDB dataset, respectively, for classification and delineation of ECG signals. The proposed technique achieves better performance compared to state-of-the-art methods, which results in a better diagnosis of heart-related problems.
远程医疗监测技术的进步使大量电生理信号的收集成为可能,包括包含心脏疾病关键诊断信息的心电图(ECG)。在心律的自动分类中有两个主要的关键挑战。首先,解决不规则心跳的具体特征是准确分类的关键。其次,心电信号的低频加上噪声干扰使得有效检测心脏异常电活动变得特别困难。为了解决这一问题,本文提出了一种集成深度学习模型——ECG_DEEPNet架构,以提高心电信号的描绘精度,从而更好地用于远程医疗监测系统的诊断。该技术包括使用卷积神经网络(CNN)的特征提取阶段和使用门控循环单元(GRU)和双向长短期记忆(BiLSTM)网络组合的序列处理阶段。该方法分为四个部分:首先是信号预处理,其次是波形分割,第三是心电信号分类,最后是对所提模型的结果进行评价。使用标准的Lobachevsky大学心电图数据库(LUDB)和QT数据库(QTDB)对所提出的技术进行了测试和训练,其中包含波形注释,用于准确分类心电波成分。该方法在QTDB数据库上对QRS、P和T的平均准确率分别为99.82%、98.50%和97.42%,在LUDB数据集上对心电信号进行分类和描绘的平均准确率分别为99.96%、98.82%和99.47%。与最先进的方法相比,所提出的技术实现了更好的性能,从而更好地诊断心脏相关问题。
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引用次数: 0
Empirical Evaluation of Public HateSpeech Datasets 公共仇恨言论数据集的实证评价
Pub Date : 2025-04-25 DOI: 10.1109/TAI.2025.3564605
Sardar Jaf;Basel Barakat
Despite the extensive communication benefits offered by social media platforms, numerous challenges must be addressed to ensure user safety. One of the most significant risks faced by users on these platforms is targeted hatespeech. Social media platforms are widely utilized for generating datasets employed in training and evaluating machine learning algorithms for hatespeech detection. However, existing public datasets exhibit numerous limitations, hindering the effective training of these algorithms and leading to inaccurate hatespeech classification. This study provides a systematic empirical evaluation of several public datasets commonly used in automated hatespeech classification. Through rigorous analysis, we present compelling evidence highlighting the limitations of current hatespeech datasets. Additionally, we conduct a range of statistical analyses to elucidate the strengths and weaknesses inherent in these datasets. This work aims to advance the development of more accurate and reliable machine learning models for hatespeech detection by addressing the dataset limitations identified.
尽管社交媒体平台提供了广泛的沟通好处,但必须解决许多挑战,以确保用户安全。用户在这些平台上面临的最大风险之一是有针对性的仇恨言论。社交媒体平台被广泛用于生成用于训练和评估仇恨语音检测的机器学习算法的数据集。然而,现有的公共数据集显示出许多局限性,阻碍了这些算法的有效训练,并导致不准确的仇恨言论分类。本研究对自动仇恨语音分类中常用的几个公共数据集进行了系统的实证评估。通过严格的分析,我们提出了令人信服的证据,突出了当前仇恨言论数据集的局限性。此外,我们进行了一系列的统计分析,以阐明这些数据集中固有的优势和劣势。这项工作旨在通过解决所确定的数据集限制,推进更准确、更可靠的仇恨语音检测机器学习模型的开发。
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引用次数: 0
RSMBSP-DON: RNA-Small Molecule Binding Sites Prediction by Dual-Path Feature Extraction and One-Dimensional Multiscale Feature Fusion Network RSMBSP-DON:基于双路径特征提取和一维多尺度特征融合网络的rna -小分子结合位点预测
Pub Date : 2025-04-25 DOI: 10.1109/TAI.2025.3564243
Xiao Yang;Zhan-Li Sun;Mengya Liu;Zhigang Zeng;Kin-Man Lam;Xin Wang
Due to the significant differences between the structural and sequence information of RNA, accurately predicting RNA-small molecule binding sites by utilizing these two attributes remains a challenging task. This study introduces a novel network for predicting RNA-small molecule binding sites, employing a two-stage approach that integrates feature extraction and fusion processes. On one hand, in order to capture the diverse characteristic information of RNA, a dual-path feature extraction module is proposed to extract features from both short-range and long-range perspectives, by incorporating convolutional and attention networks. On the other hand, a one-dimensional multiscale feature fusion module, consisting of parallel one-dimensional convolutional kernels, is proposed to extract feature information at multiple granularities and to effectively integrate the features of nucleotides on the RNA chain and their neighboring nucleotides. Experimental results demonstrate that RNA-small molecule binding sites prediction by dual-path feature extraction and one-dimensional multiscale feature fusion network (RSMBSP-DON) is competitive with some recently reported methods.
由于RNA的结构信息和序列信息存在显著差异,因此利用这两种属性准确预测RNA-小分子结合位点仍然是一项具有挑战性的任务。本研究引入了一种预测rna -小分子结合位点的新网络,采用两阶段方法,整合了特征提取和融合过程。一方面,为了捕获RNA的多种特征信息,提出了一种双路径特征提取模块,结合卷积和注意网络,从近程和长程两个角度提取特征。另一方面,提出了一种由平行一维卷积核组成的一维多尺度特征融合模块,提取多粒度特征信息,有效整合RNA链上核苷酸及其相邻核苷酸的特征。实验结果表明,基于双路径特征提取和一维多尺度特征融合网络(RSMBSP-DON)的rna -小分子结合位点预测与最近报道的一些方法相比具有一定的竞争力。
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引用次数: 0
Location, Neighborhood, and Semantic Guidance Network for RGB-D Co-Salient Object Detection RGB-D共显著目标检测的位置、邻域和语义引导网络
Pub Date : 2025-04-24 DOI: 10.1109/TAI.2025.3564238
Wujie Zhou;Bingying Wang;Xiena Dong;Caie Xu;Fangfang Qiang
Red–green–blue-depth (RGB-D) deep learning-based co-salient object detection (Co-SOD) automatically detects and segments common salient objects in images. However, this computationally intensive model cannot be run on mobile devices. To help overcome this limitation, this article proposes a localization, neighborhood, and semantic guidance network (LNSNet) with knowledge distillation (KD), called LNSNet-S*, for RGB-D Co-SOD to minimize the number of parameters and improve the accuracy. Apart from their backbone networks, the LNSNet student (LNSNet-S) and teacher (LNSNet-T) models use the same structure to capture similarity knowledge in category, channel, and pixel-point dimensions to train an LNSNet-S with KD for superior lightweight performance. For optimization, a positioning path progressive activation uses hierarchical transformers to fuse features from low to high levels, generating class activation localization maps using the fused bimodal information to obtain location information. The high-level neighborhood-guidance information is then used to guide the low-level features. Next, a multisource semantic enhancement embedding module progressively fuses multiscale cross-modal semantic information guided by class-activated localization information. A class-based progressive triplet loss facilitates the transfer of category, channel, and pixel-point information. Extensive experiments demonstrated the effectiveness and robustness of the novel LNSNet-S* in different sizes, and significant improvements were observed. The smallest LNSNet-S* model reduced the number of parameters by more than 92% compared to that of LNSNet-T, requiring only 15.9 M parameters.
基于红绿蓝深(RGB-D)深度学习的协同显著目标检测(Co-SOD)能够自动检测并分割图像中常见的显著目标。然而,这种计算密集型模型不能在移动设备上运行。为了克服这一限制,本文针对RGB-D Co-SOD提出了一种具有知识蒸馏(KD)的定位、邻域和语义引导网络(LNSNet),称为LNSNet- s *,以最大限度地减少参数数量并提高准确性。除了骨干网络之外,LNSNet学生(LNSNet- s)和教师(LNSNet- t)模型使用相同的结构来捕获类别、通道和像素点维度的相似性知识,以训练具有KD的LNSNet- s,以获得卓越的轻量级性能。在优化方面,定位路径渐进式激活利用层次变换从低到高融合特征,利用融合的双峰信息生成类激活定位图,获取位置信息。然后利用高阶邻域引导信息引导低阶特征。其次,多源语义增强嵌入模块以类激活定位信息为导向,逐步融合多尺度跨模态语义信息。基于类的渐进式三联体损耗促进了类别、信道和像素点信息的传输。大量的实验证明了新型LNSNet-S*在不同尺寸下的有效性和鲁棒性,并观察到显著的改进。最小的LNSNet-S*模型与LNSNet-T相比,参数数量减少了92%以上,只需要15.9 M个参数。
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引用次数: 0
Efficient Transformer Inference Through Hybrid Dynamic Pruning 基于混合动态剪枝的高效变压器推理
Pub Date : 2025-04-23 DOI: 10.1109/TAI.2025.3563144
Ghadeer A. Jaradat;Mohammed F. Tolba;Ghada Alsuhli;Hani Saleh;Mahmoud Al-Qutayri;Thanos Stouraitis
In the world of deep learning, transformer models have become very significant, leading to improvements in many areas, from understanding language to recognizing images, covering a wide range of applications. Despite their success, the deployment of these models in real-time applications, particularly on edge devices, poses significant challenges due to their computational intensity and memory demands. To overcome these challenges, we introduce a novel hybrid dynamic pruning (HDP) technique, an efficient algorithm-architecture codesign approach that accelerates transformers using head sparsity, block sparsity, and approximation to reduce computations in attention and reduce memory access. With the observation of the huge redundancy in attention scores and attention heads, we propose a novel integer-based block pruning to prune unimportant blocks in the attention matrix at run time. We also propose integer-based head pruning to detect and prune unimportant heads at an early stage at run time. Also, we propose an approximation method that reduces attention computations. To efficiently support these methods with lower latency, we propose the HDP accelerator (HDPA) as a coprocessor architecture, synthesized in two configurations—HDPA-edge and HDPA-server—to meet the needs of mobile and server platforms. Extensive experiments with different transformer models and benchmarks demonstrate that HDPA-server achieves $481times$ and $381times$ speedup in attention layer computation over Intel i7-1185G7 CPU and NVIDIA T4 GPU, respectively. Compared to other state-of-the-art (SOTA) accelerators, HDPA achieves $1.26times$ to $2.08times$ higher throughput, $1.3times$ to $18times$ greater MAC efficiency, and $1.1times$ to $5.1times$ improved energy efficiency, when normalized to the same computational load.
在深度学习的世界里,变形模型已经变得非常重要,导致许多领域的改进,从理解语言到识别图像,涵盖了广泛的应用。尽管这些模型取得了成功,但由于其计算强度和内存需求,在实时应用程序(特别是边缘设备)中部署这些模型带来了重大挑战。为了克服这些挑战,我们引入了一种新的混合动态修剪(HDP)技术,这是一种有效的算法架构协同设计方法,可以使用头部稀疏性、块稀疏性和近似来加速变压器,以减少注意力的计算和减少内存访问。鉴于注意分数和注意头存在巨大的冗余,我们提出了一种基于整数的块剪枝方法,在运行时对注意矩阵中不重要的块进行剪枝。我们还提出了基于整数的头部修剪,以便在运行时的早期阶段检测和修剪不重要的头部。此外,我们还提出了一种近似方法来减少注意力计算。为了以更低的延迟有效地支持这些方法,我们提出了HDP加速器(HDPA)作为协处理器架构,综合了HDPA-edge和HDPA-server两种配置,以满足移动和服务器平台的需求。在不同变压器模型和基准测试中进行的大量实验表明,HDPA-server在Intel i7-1185G7 CPU和NVIDIA T4 GPU上的注意力层计算速度分别提高了481倍和381倍。与其他最先进的(SOTA)加速器相比,HDPA的吞吐量提高了1.26倍至2.08倍,MAC效率提高了1.3倍至18倍,在归一化相同计算负载的情况下,能效提高了1.1倍至5.1倍。
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引用次数: 0
Is Perceptual Encryption Secure? A Security Benchmark for Perceptual Encryption Methods 感知加密安全吗?感知加密方法的安全基准
Pub Date : 2025-04-22 DOI: 10.1109/TAI.2025.3563438
Umesh Kashyap;Sudev Kumar Padhi;Sk. Subidh Ali
Perceptual encryption (PE) methods are the key enablers for protecting image privacy for deep learning-based applications in the cloud. In PE, the image content is obfuscated such that the deep learning models can work on the obfuscated data. The key advantage of PE over holomorphic encryption is that, unlike holomorphic encryption, the feature required by the target deep learning model is preserved in the encrypted data. Therefore, the model is not required to be retrained on the encrypted data. Recently, a significant number of PE methods have been proposed in the literature, each improving over the others. In this article, we perform a detailed security analysis of three best-known PE methods, namely, adversarial visual information hiding, learnable encryption, and encryption-then-compression methods designed to protect the privacy of images. We proposed a new generative adversarial network (GAN)-based security evaluation framework to successfully reconstruct the original images encrypted by these methods, showing clear security flaws. We conducted extensive experiments using different datasets and deep learning models. The results show significant vulnerabilities in the existing key-based PE methods.
感知加密(PE)方法是云中基于深度学习的应用程序保护图像隐私的关键使能器。在PE中,图像内容被混淆,以便深度学习模型可以处理被混淆的数据。PE相对于全纯加密的关键优势在于,与全纯加密不同,目标深度学习模型所需的特征保留在加密数据中。因此,不需要在加密数据上重新训练模型。最近,文献中提出了大量的PE方法,每种方法都比其他方法有所改进。在本文中,我们对三种最著名的PE方法进行了详细的安全性分析,即对抗性视觉信息隐藏、可学习加密和用于保护图像隐私的先加密后压缩方法。我们提出了一个新的基于生成对抗网络(GAN)的安全评估框架,成功地重建了经过这些方法加密的原始图像,显示出明显的安全缺陷。我们使用不同的数据集和深度学习模型进行了广泛的实验。结果表明,现有的基于密钥的PE方法存在明显的漏洞。
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引用次数: 0
Fuzzy Information Quantity Measurement and Feature Selection by Macrogranular Entropy 基于大颗粒熵的模糊信息量度量与特征选择
Pub Date : 2025-04-21 DOI: 10.1109/TAI.2025.3562839
Zhilin Zhu;Chucai Zhang;Jianhua Dai
Feature selection is an important data preprocessing process in artificial intelligence, which aims to eliminate redundant features while retaining essential features. Measuring feature significance and relevance between features is a significant challenge. Fuzzy information entropy is an extension of Shannon entropy. It is widely used for quantifying the information of fuzzy divisions. However, it has significant limitations, notably the lack of monotonicity in fuzzy conditional entropy measure of decision uncertainty in the feature selection process. We introduce a novel measurement macrogranular entropy (ME) and construct some generalized forms, such as conditional ME, mutual macrogranular information, and joint ME. The conditional ME exhibits monotonicity when measuring decision uncertainty. In addition, we propose two feature selection algorithms: one based on monotonic conditional ME (MCME), and the other based on the degree of symmetric association (ADSA). The ADSA algorithm and the MCME algorithm are compared against eight other feature selection algorithms through a series of experiments. The comparison was conducted based on classification performance using SVM and NB classifiers, and evaluation metrics including F1-score and recall. In terms of all four evaluation metrics, ADSA and MCME achieved the top two rankings, respectively. Specifically, on the NB and SVM classifiers, the ADSA algorithm improves the average accuracy by 12.22% and 2.88% compared to the original feature set, while MCME improves the accuracy by 10.07% and 1.01%, respectively. Experimental comparisons demonstrate that ADSA algorithm effectively removes redundant information from the dataset during feature selection.
特征选择是人工智能中重要的数据预处理过程,其目的是在保留基本特征的同时剔除冗余特征。测量特征的重要性和特征之间的相关性是一个重大的挑战。模糊信息熵是香农熵的扩展。它被广泛用于模糊划分信息的量化。然而,它也有明显的局限性,特别是在特征选择过程中,模糊条件熵度量的决策不确定性缺乏单调性。引入了一种新的度量宏粒熵的方法,并构造了一些广义形式,如条件宏粒熵、互宏粒熵和联合宏粒熵。条件最小二乘法在测量决策不确定性时表现出单调性。此外,我们提出了两种特征选择算法:一种是基于单调条件最小二乘法(MCME),另一种是基于对称关联度(ADSA)。通过一系列实验,将ADSA算法和MCME算法与其他八种特征选择算法进行了比较。基于SVM和NB分类器的分类性能,以及f1得分和召回率等评价指标进行比较。在所有四项评估指标中,ADSA和MCME分别获得了前两名。其中,在NB和SVM分类器上,ADSA算法的平均准确率比原始特征集提高了12.22%和2.88%,MCME算法的平均准确率分别提高了10.07%和1.01%。实验结果表明,ADSA算法在特征选择过程中能够有效地去除数据集中的冗余信息。
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引用次数: 0
Model Selection of Anomaly Detectors in the Absence of Labeled Validation Data 无标记验证数据时异常检测器的模型选择
Pub Date : 2025-04-21 DOI: 10.1109/TAI.2025.3562505
Clement Fung;Chen Qiu;Aodong Li;Maja Rudolph
Anomaly detection is the task of identifying abnormal samples in large unlabeled datasets. Although the advent of foundation models has produced powerful zero-shot anomaly detection methods, their deployment in practice is often hindered by the absence of labeled validation data—without it, detection performance cannot be evaluated reliably. In this work, we propose selection with synthetic anomalies (SWSA): a general-purpose framework to select image-based anomaly detectors without labeled validation data. Instead of collecting labeled validation data, we generate synthetic anomalies from a small support set of normal images without using any training or fine-tuning. Our synthetic anomalies are then used to create detection tasks that compose a validation framework for model selection. In an empirical study, we evaluate SWSA with three types of synthetic anomalies and on two selection tasks: model selection of image-based anomaly detectors and prompt selection for CLIP-based anomaly detection. SWSA often selects models and prompts that match selections made with a ground-truth validation set, outperforming baseline selection strategies.
异常检测是在大型未标记数据集中识别异常样本的任务。尽管基础模型的出现产生了强大的零射击异常检测方法,但它们在实践中的部署常常受到缺乏标记验证数据的阻碍——没有标记验证数据,检测性能就无法可靠地评估。在这项工作中,我们提出了综合异常选择(SWSA):一个通用框架,用于选择基于图像的异常检测器,而不需要标记验证数据。我们没有收集标记的验证数据,而是在不使用任何训练或微调的情况下,从一个小的正常图像支持集生成合成异常。然后,我们的合成异常被用来创建检测任务,这些任务构成了模型选择的验证框架。在一项实证研究中,我们用三种类型的合成异常和两个选择任务来评估SWSA:基于图像的异常检测器的模型选择和基于clip的异常检测器的提示选择。SWSA经常选择模型,并提示匹配与基线验证集相匹配的选择,优于基线选择策略。
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引用次数: 0
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IEEE transactions on artificial intelligence
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