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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Visual privacy-preserving level evaluation for multilayer compressed sensing model using contrast and salient structural features
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Visual privacy-preserving level evaluation for multilayer compressed sensing model using contrast and salient structural features

机译:使用对比度和突出结构特征的多层压缩传感模型的视觉隐私保留级别评估

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摘要

Recognition and classification tasks in images or videos are ubiquitous, but they can lead to privacy issues. People increasingly hope that camera systems can record and recognize important events and objects, such as real-time recording of traffic conditions and accident scenes, elderly fall detection, and in-home monitoring. However, people also want to ensure these activities do not violate the privacy of users or others. The sparse representation classification and recognition algorithms based on compressed sensing (CS) are robust at recognizing human faces from frontal views with varying expressions and illuminations, as well as occlusions and disguises. This is a potential way to perform recognition tasks while preserving visual privacy. In this paper, an improved Gaussian random measurement matrix is adopted in the proposed multilayer CS (MCS) model to realize multiple image CS and achieve a balance between visual privacy-preserving and recognition tasks. The visual privacy-preserving level evaluation for MCS images has important guiding significance for image processing and recognition. Therefore, we propose an image visual privacy-preserving level evaluation method for the MCS model (MCS-VPLE) based on contrast and salient structural features. The basic concept is to use the contrast measurement model based on the statistical mean of the asymmetric alpha-trimmed filter and the salient generalized center-symmetric local binary pattern operator to extract contrast and salient structural features, respectively. The features are fed into a support vector regression to obtain the image quality score, and the fuzzy c-means algorithm is used for clustering to obtain the final evaluated image visual privacy-preserving score. Experiments on three constructed databases show that the proposed method has better prediction effectiveness and performance than conventional methods.
机译:图像或视频中的识别和分类任务是无处不在的,但它们可以导致隐私问题。人们越来越希望相机系统可以记录和识别重要的事件和对象,例如交通状况和事故场景的实时记录,老年人跌倒检测和家庭监控。但是,人们还希望确保这些活动不会违反用户或其他人的隐私。基于压缩感测(CS)的稀疏表示分类和识别算法在识别来自具有不同表达和照明的前视图的人面,以及闭塞和伪装。这是在保留视觉隐私时执行识别任务的潜在方法。在本文中,在所提出的多层CS(MCS)模型中采用改进的高斯随机测量矩阵,以实现多个图像CS并在视觉隐私保留和识别任务之间实现平衡。 MCS图像的视觉隐私保留级别评估对图像处理和识别具有重要的指导意义。因此,我们提出了一种基于对比度和突出结构特征的MCS模型(MCS-VPLE)的图像视觉隐私保留级别评估方法。基本概念是基于非对称α-修整滤波器的统计平均值和凸广义中心对称局部二进制模式操作者的统计均值来利用对比度测量模型,以分别提取对比度和突出结构特征。该特征被馈送到支持向量回归以获得图像质量分数,并且模糊C均值算法用于聚类以获得最终评估的图像可视隐私保留得分。三个构造数据库的实验表明,该方法具有比传统方法更好的预测效率和性能。

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