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1.
A spectral semi-blind deconvolution with least trimmed squares regularization (SBD-LTS) is proposed to improve spectral resolution. Firstly, the regularization term about the spectrum data is modeled as the form of least trimmed squares, which can help to preserve the peak details better. Then the regularization term about the PSF is modeled as L1-norm to enhance the stability of kernel estimation. The cost function of SBD-LTS is formulated and the numerical solution processes are deduced for deconvolving the spectra and estimating the PSF. The deconvolution results of simulated infrared spectra demonstrate that the proposed SBD-LTS can recover the spectrum effectively and estimate the PSF accurately, as well as has a merit on preserving the details, especially in the case of noise. The deconvolution result of experimental Raman spectrum indicates that SBD-LTS can resolve the spectrum and improve the resolution effectively.  相似文献   

2.
A spectral semi-blind deconvolution with hybrid regularization (SBD-HR) is proposed to recover the spectrum and to estimate the parameter of the point spread function (PSF) adaptively. Firstly, a weighted Tikhonov regularization term about the spectrum is presented to preserve the details of spectrum. Then the regularization term about the PSF is modeled as L1-norm instead of L2-norm to enhance the stability of kernel estimation. The numerical solution processes for recovering the spectrum and for estimating the parameter of the PSF are deduced. Simulation results of infrared spectrum deconvolution demonstrate that the proposed method can recover the spectrum better from the degraded spectrum and estimate the parameter of the PSF accurately.  相似文献   

3.
近红外光谱属微弱信号,其质量易受被测物体自身状态及各种外界因素干扰,具体而言,在近红外光谱定性分析中,影响光谱质量的因素主要有光谱仪状态改变、光谱采集人员错误操作、奇异样本干扰等。建模时若混入质量较差的光谱易影响所建模型的稳健性与适用性,因此光谱质量判定是确保模型预测能力的一项重要工作。目前用于定量分析的光谱质量判定研究较多,而用于定性分析的光谱质量判定研究较少,为此,提出一种基于支持向量机数据描述的近红外光谱定性分析光谱质量判定方法,采用自制漫透射近红外光谱装置采集单籽粒玉米光谱,以正常状况下采集的某品种玉米单籽粒漫透射光谱作为正常样本,而人为漏光、近红外探测器窗口覆盖玉米表皮碎屑、光源强度改变、光源与被测玉米籽粒距离改变、相近品种玉米籽粒混入等几种情况下所采集光谱作为异常样本,在此数据集基础上研究了基于支持向量机数据描述的定性分析光谱质量判定模型建立的原理与方法,其后将支持向量机数据描述方法与常用的马氏距离法、局部异常因子法等光谱质量判定方法进行了对比,并以正常样本正确识别率与异常样本正确拒识率的均值作为评价标准,对实验结果进行分析,由实验结果可以看出相比其他两种方法,基于支持向量机数据描述的光谱质量判定方法具有最优判定能力,建模集正常样本数目会影响光谱质量判定能力,在实际使用光谱质量判定方法时,建模集应包含足量样本。在近红外定性分析时可以将该方法作为剔除异常光谱的手段,在预处理、特征提取,模式分类等近红外光谱定性分析步骤前首先进行基于支持向量机的光谱质量判定步骤,并剔除异常光谱,可有效提高近红外光谱定性分析模型的可靠性,亦为近红外光谱定性分析光谱质量判定提供新的方法参考。  相似文献   

4.
瑞利-布里渊散射的散射截面比拉曼散射大,因而其在大气散射中实现对大气对流层温度廓线的准确测量方面具有一定的优势,同时利用瑞利-布里渊散射实现高压环境下温度的准确测量对于航天飞机主引擎状态的监测和超燃发动机燃烧室参数测量方面具有重要意义。基于自发瑞利-布里渊散射分别采用反卷积方法和卷积方法来实现空气在不同压力条件下的温度反演,研究引起温度反演误差的原因,并对利用两种方法获得的温度测量结果进行了比较。在利用基于维纳滤波器的反卷积方法对测量光谱直接处理实现温度反演之前,首先利用反卷积方法对由自发瑞利-布里渊散射模型与仪器函数卷积得到的卷积光谱进行处理获得反卷积光谱,将反卷积光谱与未经卷积的理论计算光谱进行比较实现温度反演, 并基于温度反演误差小于1.0 K,光谱拟合误差相对较小,光谱处理时间短的参数优化原则对反卷积方法中的关键参数奇异值叠加数进行了优化处理,得到优化后的奇异值叠加数为150。随后实验测量了由532 nm波长的连续激光激发的纯净空气在温度为294.0 K,压强为1~7 bar条件下的自发瑞利-布里渊散射光谱,并结合理论计算光谱和最小χ2值原理对光谱信号散射角进行优化,优化值为90.7°,同时利用反卷积和卷积方法分别对实验测量光谱进行处理实现空气在不同压强下的温度反演。实验结果表明反卷积方法在一定程度上可以提高信号光谱分辨率,而且利用反卷积和卷积方法均可以实现空气在不同压力(1~7 bar)条件下温度的准确测量,温度测量的最大误差均小于2.0 K;利用反卷积方法的温度反演结果随着气体压强的增大随之得到改善,实现温度反演测量所需要的光谱处理时间减少;在空气压强较低(≤2 bar)时,由卷积方法获得的温度反演结果要优于反卷积方法,压强较高(>2 bar)时,两种方法的温度反演结果相近, 其绝对误差均小于1.0 K。通过分析得到引起两种方法温度反演误差的原因主要包括环境温度的波动(±0.2 K),散射角存在一定的不确定度以及气体的各已知参数的微量偏差对温度测量结果的影响以及反卷积对光谱噪声的非线性放大引起的光谱扰动对温度测量结果的影响。在实验中可以通过提高测量光谱的信噪比、提高散射角的优化精度及改善反卷积方法来获得更加准确的参数测量结果。  相似文献   

5.
In this paper we have proposed a single image motion deblurring algorithm that is based on a novel use of dual Fourier spectrum combined with bit plane slicing algorithm and Radon transform (RT) for accurate estimation of PSF parameters such as, blur length and blur angle. Even after very accurate PSF estimation, the deconvolution algorithms tend to introduce ringing artifacts at boundaries and near strong edges. To prevent this post deconvolution effect, a post processing method is also proposed in the framework of traditional Richardson–Lucy (RL) deconvolution algorithm. Experimental results evaluated on the basis of both qualitative and quantitative (PSNR, SSIM) metrics, verified on the dataset of both grayscale and color blurred images show that the proposed method outperforms the existing algorithms for removal of uniform blur. A comparison with state-of-the-art methods proves the usefulness of the proposed algorithm for deblurring real-life images/photographs.  相似文献   

6.
Motion deblurring methods using blurred/noisy image pairs usually include denoising process of the noisy image. Because both remaining noise and distorted fine details in the denoised image cause an error on deblurring, we propose an algorithm using an edge map of the noisy image to retain sharp edge information while neglecting noise in any smooth region that does not contain information about the motion that occurred during the exposure. In addition, the blur kernel is efficiently estimated by employing the fast total variation regularization method for the gradients of blurred and noisy images only on edge regions. For latent image restoration, another fidelity term is added, which compares the gradients of the noisy and estimated latent images on edge regions to preserve the fine details of the noisy image. To model a sparse distribution of real-world image gradients, a deconvolution method imposing hyper-Laplacian priors based on an alternating minimization scheme is also derived to restore a latent image efficiently. Experimental results show that the peak signal-to-noise ratios of the restored images against the original latent images have been increased by 11.1% on average, when compared to the existing algorithms using an image pair.  相似文献   

7.
Novel approach to single frame multichannel blind image deconvolution has been formulated recently as non-negative matrix factorization problem with sparseness constraints imposed on the unknown mixing vector that accounts for the case of non-sparse source image. Unlike most of the blind image deconvolution algorithms, the novel approach assumed no a priori knowledge about the blurring kernel and original image. Our contributions in this paper are: (i) we have formulated generalized non-negative matrix factorization approach to blind image deconvolution with sparseness constraints imposed on either unknown mixing vector or unknown source image; (ii) the criteria are established to distinguish whether unknown source image was sparse or not as well as to estimate appropriate sparseness constraint from degraded image itself, thus making the proposed approach completely unsupervised; (iii) an extensive experimental performance evaluation of the non-negative matrix factorization algorithm is presented on the images degraded by the blur caused by the photon sieve, out-of-focus blur with sparse and non-sparse images and blur caused by atmospheric turbulence. The algorithm is compared with the state-of-the-art single frame blind image deconvolution algorithms such as blind Richardson-Lucy algorithm and single frame multichannel independent component analysis based algorithm and non-blind image restoration algorithms such as multiplicative algebraic restoration technique and Van-Cittert algorithms. It has been experimentally demonstrated that proposed algorithm outperforms mentioned non-blind and blind image deconvolution methods.  相似文献   

8.
用神经网络鉴别退化图像的模糊类型   总被引:3,自引:2,他引:1  
尹兵  王延斌  刘威 《光学技术》2006,32(1):138-140
提出了一种用神经网络鉴别退化图像的模糊类型的方法。由于采用不同降质方法得到退化图像的频谱差异较大,以此作为判别依据,用概率神经网络实现了对四种模糊类型:离焦,矩形,运动和高斯模糊的鉴别。根据神经网络的鉴别结果决定点扩散函数的初始估计值,可大大地提高盲解恢复算法的复原质量和系统点扩散函数的估计精度,扩大了算法的实用范围。  相似文献   

9.
Edge information is important for measurement based on structured light. The presented effort puts forward an image restoration method with edge regularization for structured light measurement, which detects the edge of image, then updates the parameters of image degradation model and restores results in iteration. The diffraction limit of optics and nonlinear distortion of sensors are calculated as prior knowledge for semi-blind deconvolution. Blur metric is introduced for constraints of deconvolution iterations. Images before and after restoration are sent to shape recognition and automatic calibration modules for comparison. From experimental results we can conclude that the proposed approach can effectively enhance image quality and edge details, so that greater precision can be achieved.  相似文献   

10.
用于电介质中空间电荷分布测量的Tikhonov反卷积算法   总被引:5,自引:1,他引:4  
研究了使用压力波法测量平板电介质试样的空间电荷分布的数值解法,使用基于Tikhonov正则化方法的反卷积算法得到了真实的空间电荷分布.在反卷积算法中使用了相关的技术处理,如小波包过滤高频噪音,Tikhonov正则化方法处理积分方程等.利用数值实验研究了噪声对反卷积算法的影响,结果表明,在无噪或者低噪环境下,反卷积算法能够非常好地计算出电介质中的空间电荷分布;在处理有噪数据时,反卷积的结果受到明显的影响,但仍然有较高的计算精度.正则化参数α对空间电荷分布的数值解起着明显的光滑作用,但是对于解的积分值却影响不大.对实际测量数据进行处理的结果表明,反卷积算法成功地计算出了固体电介质中的空间电荷分布和电场分布.  相似文献   

11.
To retrieve the phase from the noisy measured intensities in the diffraction planes, an iterative Wiener deconvolution based method is proposed. With the same iterative scheme as the iterative angular spectrum method (IAS), the propagation of the optical wave function between the input plane and the diffraction planes is calculated by Wiener deconvolution in this method. The angular spectrum convolution kernel used in the iterative angular spectrum method is incorporated into the Wiener filter. The simulation experiments show that the proposed method can reduce the impact of the noise on the retrieved phase and performed better than the pre-denoising method. Furthermore, the proposed method exhibits great advantage compared to IAS for retrieving the complicated phase distribution from two measured intensities.  相似文献   

12.
When blurred images have saturated or over-exposed pixels, conventional blind deconvolution approaches often fail to estimate accurate point spread function (PSF) and will introduce local ringing artifacts. In this paper, we propose a method to deal with the problem under the modified multi-frame blind deconvolution framework. First, in the kernel estimation step, a light streak detection scheme using multi-frame blurred images is incorporated into the regularization constraint. Second, we deal with image regions affected by the saturated pixels separately by modeling a weighted matrix during each multi-frame deconvolution iteration process. Both synthetic and real-world examples show that more accurate PSFs can be estimated and restored images have richer details and less negative effects compared to state of art methods.  相似文献   

13.
In this paper, we describe blur identification and restoration of noisy degraded images. The point-spread function (PSF) can be characterized by the quantity of blur. Thus the blur identification problem can be solved as a parameter estimation problem. The estimation method is a generalized cross-validation (GCV) criterion that is known as a powerful measure that can be used to choose the optimal regularization parameter without a priori knowledge about noise. We use the iterative damped-1east squares (DLS) algorithm which is based on the principle of damped least-squares for restoring noisy degraded images.  相似文献   

14.
In the problem of blind image deconvolution, estimation of blurring kernel is the first and foremost important step. Quality of restored image highly depends upon the accuracy of this estimation. In this paper we propose a modified cepstrum domain approach combined with bit-plane slicing method to estimate uniform motion blur parameters, which improves the accuracy without any manual intervention. A single motion blurred image under spatial invariance condition is considered. It is noted that the fourth bit plane of the modified cepstrum carries an important cue for estimating the blur direction. With the exploration of this bit plane no other post processing is required to estimate blur direction. The experimental evaluation is carried out on both real-blurred photographs and synthetically blurred standard test images such as Berkeley segmentation dataset and USC-SIPI texture image database. The experimental results show that the proposed method is capable of estimating blur parameters more accurately than the existing methods.  相似文献   

15.
This work devotes to the image deconvolution problem that restores clear image from its blurred and noisy measurements with little prior about the blur. A deconvolution method based on sparse and redundant representation theory is developed in this paper. It firstly represents the blur and image over different redundant dictionaries and imposes sparsity constraint to their representation coefficients respectively, then alternately estimates them using an iterative algorithm employing optimization technique. Experimental results on astronomical images show that the proposed method can achieve as good performance as the method requiring a known blur, which demonstrates its effectiveness.  相似文献   

16.
基于迭代Tikhonov正规化的三刺激值重建光谱方法研究   总被引:2,自引:0,他引:2  
光谱图像中的反射率光谱数据维数高,且与光源、设备均无关,能够比较全面、真实、客观地描述图像中物体的颜色信息。针对三色相机的光谱图像获取系统中三维色度数据重建多维光谱数据产生的光谱信息丢失、以及伴随而生的颜色信息丢失问题,提出了迭代Tikhonov正规化的光谱重建方法。首先依据色度学理论中色度值与反射率光谱之间的关系,构建反射率光谱重建方程建立起相机所获三维色度数据与高维反射率光谱数据的映射关系;然后,通过反射率光谱重建方程的病态分析,在Moore-Penrose伪逆矩阵求解思想的基础上构建迭代Tikhonov正规化方法求解反射率光谱,并利用训练样本数据通过L-曲线方法训练获取迭代Tikhonov正规化的最优正规化参数,以有效控制并改善反射率光谱重建方程求解的病态、减少重建光谱的光谱信息丢失。实验通过选取样本数据对光谱重建方法进行验证。验证实验的结果表明所提出的光谱重建方法改善了三色相机的光谱图像获取系统中重建光谱的光谱信息丢失程度,使得重建光谱的光谱误差和色度误差较其他光谱重建方法均有明显降低。  相似文献   

17.
杨航  吴笑天  王宇庆 《中国光学》2017,10(2):207-218
本文提出一种新的结构字典学习方法,并利用它进行图像复原。首先给出结构字典学习的基本内容和方法,然后将傅里叶正则化方法和结构字典学习方法有效整合到图像复原算法中。结构字典学习方法是先将原图像进行结构分解,再分别学习出每个结构图像中的字典,最后利用这些字典对原图像进行稀疏的表示。结合傅里叶正则化,提出了一种有效的迭代图像复原算法:第一步在傅里叶域利用正则化反卷积方法得到图像的初步估计;第二步采用结构字典学习的方法对遗留的噪声进行去噪处理。实验结果表明,提出的方法在改进信噪比和视觉质量上都要优于6种先进的图像复原方法,改进的信噪比平均提升0.5 d B以上。  相似文献   

18.
L Yan  H Fang  S Zhong 《Optics letters》2012,37(14):2778-2780
A blind deconvolution algorithm with spatially adaptive total variation regularization is introduced. The spatial information in different image regions is incorporated into regularization by using the edge indicator called difference eigenvalue to distinguish edges from flat areas. The proposed algorithm can effectively reduce the noise in flat regions as well as preserve the edge and detailed information. Moreover, it becomes more robust with the change of the regularization parameter. Comparative results on simulated and real degraded images are reported.  相似文献   

19.
Laser bubble detection based on optical photography is widely used in industrial areas such as air tightness measurements. However, the precision of detection is severely affected by the degradation of detecting images. In order to enhance the visual quality of bubble detection, an image semiblind restoration method with edge regularization is applied along with the estimation of the dynamic modulation transfer function. We use objective-image quality metrics to limit the deconvolution iterations of the semiblind deconvolution algorithm. We compare the performance of the binary morphology filter. Improvement by the proposed method can be seen from the experimental results. It can be concluded that the proposed approach can effectively enhance quality and edge details of the laser bubble detecting images, so that greater precision can be achieved.  相似文献   

20.
为了提高高光谱图像的空间分辨率,提出了一种基于GoogLeNet和空间谱变换的高光谱图像超分辨率(SR)方法.设计出遥感图像的光谱SR框架,对图像中不同反射光谱进行提取;采用GoogLeNet的稀疏编码对粗像素光谱进行放大,并投影到高分辨率字典上,将潜在SR表示进行反转,以获得超分辨光谱;为了提高图像重构的保真度,利用...  相似文献   

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