共查询到19条相似文献,搜索用时 359 毫秒
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本文提出一种采用非局部主成分分析的极大似然估计去噪方法.首先采用非局部主成分分析算法来计算像素邻域间的灰度值和纹理结构相似性,然后通过极大似然估计方法估计最优复原图像.本方法使用非局部主成分分析克服现有局部性去噪方法模糊边界等缺陷,引入极大似然估计方法来改进现有非局部均值的简单加权均值去噪处理,从而提高对图像细节信息的复原能力.最后分别使用本文方法、非局部均值和局部极大似然估计三种去噪方法,在不同噪音大小和不同几何纹理复杂度的图像中进行定性和定量的去噪实验.结果表明,本文方法可在保持图像细节和纹理信息的情况下有效去噪,较之现有方法效果更好. 相似文献
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时域高通滤波非均匀性校正是一种典型的基于场景的红外焦平面阵列非均匀性校正算法,但其易产生"鬼影"现象,影响校正效果.本文在时域高通滤波校正算法的原理基础上,分析了其校正过程中"鬼影"现象产生的原因,即由于全部图像信息的叠加而导致静止场景被滤除且运动场景会在当前位置留下反转的图像,从而形成"鬼影".引入非局部均值滤波方法,提出了一种去"鬼影"的非局部均值滤波-时域高通滤波非均匀性校正方法.该方法首先采用非局部均值滤波将图像信息分离成高低频两部分(其中高频成分含有大部分噪音及非均匀性),并使用高频成分进行时域高通滤波算法中低通输出的递归运算,使得低通滤波后的图像含有较少的场景信息,从而可使校正输出图像含有较少的"鬼影"现象.采用两组真实红外序列图像进行验证,结果表明该算法不仅能获得较好的非均匀性校正效果,而且能较好地抑制时域高通滤波算法中的"鬼影"现象. 相似文献
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基于复小波和局部梯度的靶标图像混合降噪 总被引:2,自引:2,他引:0
提出了一种有效去除光电成像测量系统中靶标图像噪音的混合降噪法.根据图像像素局部梯度模找出图像中受椒盐噪音污染的像素,使用中值滤波降噪.对去除椒盐噪音的图像,利用复对数Gabor小波提取各像素的相位信息和幅度信息,确定最小尺度滤波器对噪音幅度分布的估计值,从而自动地确定各个尺度上的噪音幅度分布的估计值和噪音萎缩阈值,达到有效降噪的目的.实验表明,该方法的降噪效果明显优于实symlet4小波、中值滤波和单一复对数Gabor小波降噪法. 相似文献
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基于递推最小二乘的红外焦平面非均匀校正算法 总被引:5,自引:4,他引:1
根据递推最小二乘和图像配准原理,提出了基于递推最小二乘的红外焦平面非均匀校正算法(简称ILS算法),有效降低算法的时间和空间复杂度,使噪音图像的校正处理能够实时完成.ILS算法具有噪音参量估计准确度高、收敛速度快和计算复杂度低等优点.给出了算法的推导并用仿真数据对算法的有效性进行验证. 相似文献
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根据递推最小二乘和图像配准原理,提出了基于递推最小二乘的红外焦平面非均匀校正算法(简称ILS算法),有效降低算法的时间和空间复杂度,使噪音图像的校正处理能够实时完成.ILS算法具有噪音参量估计准确度高、收敛速度快和计算复杂度低等优点.给出了算法的推导并用仿真数据对算法的有效性进行验证. 相似文献
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The traditional noise reduction methods for 3-D infrared hyperspectral images typically operate independently in either the spatial or spectral domain, and such methods overlook the relationship between the two domains. To address this issue, we propose a hybrid spatial-spectral method in this paper to link both domains. First, principal component analysis and bivariate wavelet shrinkage are performed in the 2-D spatial domain. Second, 2-D principal component analysis transformation is conducted in the 1-D spectral domain to separate the basic components from detail ones. The energy distribution of noise is unaffected by orthogonal transformation; therefore, the signal-to-noise ratio of each component is used as a criterion to determine whether a component should be protected from over-denoising or denoised with certain 1-D denoising methods. This study implements the 1-D wavelet shrinking threshold method based on Stein’s unbiased risk estimator, and the quantitative results on publicly available datasets demonstrate that our method can improve denoising performance more effectively than other state-of-the-art methods can. 相似文献
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噪声是影响激光相干场高分辨成像系统像质的重要因素,激光相干场成像系统既受背景光加性噪声影响,又受激光乘性散斑噪声影响.为解决激光相干场成像系统受激光乘性散斑噪声和背景光加性噪声叠加引起的成像像质退化效应问题,从噪声抑制角度提高激光相干场系统高分辨成像像质,研究建立了激光散斑乘性噪声和背景光加性噪声对大气下行链路激光回波场信号影响干扰模型,并基于该模型提出了一种基于同态滤波和稀疏基追踪级联复合去噪算法.首先基于同态滤波理论将激光乘性散斑噪声转化为加性噪声,再由高通滤波器滤除散斑噪声,最后采用基追踪稀疏理论方法抑制背景光等加性噪声对像质的影响.研究表明,较现有单一去噪方法,该级联复合去噪方法可一次性消除激光乘性散斑噪声和背景加性噪声两种不同性质的噪声,有效改善了激光相干场成像质量. 相似文献
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Generalized total variation-based MRI Rician denoising model with spatially adaptive regularization parameters 总被引:1,自引:0,他引:1
Ryan Wen Liu Lin Shi Wenhua Huang Jing Xu Simon Chun Ho Yu Defeng Wang 《Magnetic resonance imaging》2014
Magnetic resonance imaging (MRI) is an outstanding medical imaging modality but the quality often suffers from noise pollution during image acquisition and transmission. The purpose of this study is to enhance image quality using feature-preserving denoising method. In current literature, most existing MRI denoising methods did not simultaneously take the global image prior and local image features into account. The denoising method proposed in this paper is implemented based on an assumption of spatially varying Rician noise map. A two-step wavelet-domain estimation method is developed to extract the noise map. Following a Bayesian modeling approach, a generalized total variation-based MRI denoising model is proposed based on global hyper-Laplacian prior and Rician noise assumption. The proposed model has the properties of backward diffusion in local normal directions and forward diffusion in local tangent directions. To further improve the denoising performance, a local variance estimator-based method is introduced to calculate the spatially adaptive regularization parameters related to local image features and spatially varying noise map. The main benefit of the proposed method is that it takes full advantage of the global MR image prior and local image features. Numerous experiments have been conducted on both synthetic and real MR data sets to compare our proposed model with some state-of-the-art denoising methods. The experimental results have demonstrated the superior performance of our proposed model in terms of quantitative and qualitative image quality evaluations. 相似文献
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Image fusion is a method of integrating all relevant and complementary information from images of same source or various sources into a single composite image without any degradation. In this paper, a novel pixel level fusion called Iterative block level principal component averaging fusion is proposed by dividing source images into smaller blocks, thus principal components are calculated for relevant block of source images. Average of principal components of all the blocks provide weights for fusion rule, thus importance is given to blocks of source images. In this scenario, Iterations are incorporated in the form of size of blocks of source images which gives fusion results with maximum average mutual information. This algorithm is experimented for the fusion of noise free medical images and noise filtered of the same. The experimental results for both the cases show that the proposed algorithm performs well in terms of average mutual information and mean structural similarity index. 相似文献
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Magnetic Resonance (MR) images often suffer from noise pollution during image acquisition and transmission, which limits the accuracy of quantitative measurements from the data. Noise in magnitude MR images is usually governed by Rician distribution, due to the existence of uncorrelated Gaussian noise with zero-mean and equal variance in both the real and imaginary parts of the complex K-space data. Different from the existing MRI denoising methods that utilizing the spatial neighbor information around the pixels or patches, this work turns to capture the pixel-level distribution information by means of supervised network learning. A progressive network learning strategy is proposed via fitting the distribution of pixel-level and feature-level intensities. The proposed network consists of two residual blocks, one is used for fitting pixel domain without batch normalization layer and another one is applied for matching feature domain with batch normalization layer. Experimental results under synthetic, complex-valued and clinical MR brain images demonstrate great potential of the proposed network with substantially improved quantitative measures and visual inspections. 相似文献
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扫描电镜能直观观察样品的表面结构,但其高分辨形貌成像图固有的噪声不利于图像分析。针对集成电路器件扫描电镜成像图的去噪声问题,采用了通过滑动条方式自适应设置图像二值化阈值,将数学形态学处理方法与图像二值化相结合,实现了对图像噪声的自动去除处理;同时还设计了通过手动勾勒图像中的多边形区域实现去除噪声的功能;为使图像达到更好的效果,系统还可允许针对自动去噪后的图像自行选择是否进行手动去噪,并设计实现了风格直观简洁,易于操作的交互式用户界面。对多幅集成电路器件扫描电镜成像图进行去噪声处理的结果和对去噪前后的图像进行无参考图像质量评价的数据表明,该方法有效地改善了扫描电镜图的信噪比,获得了突出前景等有用信息。 相似文献