1,923 research outputs found
Geodesics on the manifold of multivariate generalized Gaussian distributions with an application to multicomponent texture discrimination
We consider the Rao geodesic distance (GD) based on the Fisher information as a similarity measure on the manifold of zero-mean multivariate generalized Gaussian distributions (MGGD). The MGGD is shown to be an adequate model for the heavy-tailed wavelet statistics in multicomponent images, such as color or multispectral images. We discuss the estimation of MGGD parameters using various methods. We apply the GD between MGGDs to color texture discrimination in several classification experiments, taking into account the correlation structure between the spectral bands in the wavelet domain. We compare the performance, both in terms of texture discrimination capability and computational load, of the GD and the Kullback-Leibler divergence (KLD). Likewise, both uni- and multivariate generalized Gaussian models are evaluated, characterized by a fixed or a variable shape parameter. The modeling of the interband correlation significantly improves classification efficiency, while the GD is shown to consistently outperform the KLD as a similarity measure
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Texture-Driven Coronary Artery Plaque Characterization Using Wavelet Packet Signatures
High-frequency ultrasound transducers are being widely used to generate high resolution, real time, cross-sectional images of the coronary arteries. In this paper, we present a robust unsupervised texture-derived technique based on multi-channel wavelet frames to delineate atherosclerotic plaque compositions. The intravascular ultrasound (IVUS) signals were acquired from coronary arteries dissected from 32 diseased cadaver hearts employing 40 MHz mechanically rotating, single-element transducers. The wavelet packet representations were classified using a K- means clustering algorithm to generate IVUS-histology color maps (IV-HCMs) and categorize tissues in lipidic, fibrotic and calcified. Finally, two independent observers evaluated the results contrasting the histology images corresponding to the IV-HCMs. Our results show that the proposed algorithm may have great potential as an alternative to existing spectrum-based classification techniques
Differing self-similarity in light scattering spectra: A potential tool for pre-cancer detection
The fluctuations in the elastic light scattering spectra of normal and
dysplastic human cervical tissues analyzed through wavelet transform based
techniques reveal clear signatures of self-similar behavior in the spectral
fluctuations. Significant differences in the power law behavior ascertained
through the scaling exponent was observed in these tissues. The strong
dependence of the elastic light scattering on the size distribution of the
scatterers manifests in the angular variation of the scaling exponent.
Interestingly, the spectral fluctuations in both these tissues showed
multi-fractality (non-stationarity in fluctuations), the degree of
multi-fractality being marginally higher in the case of dysplastic tissues.
These findings using the multi-resolution analysis capability of the discrete
wavelet transform can contribute to the recent surge in the exploration for
non-invasive optical tools for pre-cancer detection.Comment: 13 pages, 14 figure
Multi-spectral light interaction modeling and imaging of skin lesions
Nevoscope as a diagnostic tool for melanoma was evaluated using a white light source with promising results. Information about the lesion depth and its structure will further improve the sensitivity and specificity of melanoma diagnosis. Wavelength-dependent variable penetration power of monochromatic light in the trans-illumination imaging using the Nevoscope can be used to obtain this information. Optimal selection of wavelengths for multi-spectral imaging requires light-tissue interaction modeling. For this, three-dimensional wavelength dependent voxel-based models of skin lesions with different depths are proposed. A Monte Carlo simulation algorithm (MCSVL) is developed in MATLAB and the tissue models are simulated using the Nevoscope optical geometry. 350-700nm optical wavelengths with an interval of 5nm are used in the study. A correlation analysis between the lesion depth and the diffuse reflectance is then used to obtain wavelengths that will produce diffuse reflectance suitable for imaging and give information related to the nevus depth and structure. Using the selected wavelengths, multi-spectral trans-illumination images of the skin lesions are collected and analyzed.
An adaptive wavelet transform based tree-structure classification method (ADWAT) is proposed to classify epi-illuminance images of the skin lesions obtained using a white light source into melanoma and dysplastic nevus images classes. In this method, tree-structure models of melanoma and dysplastic nevus are developed and semantically compared with the tree-structure of the unknown image for classification. Development of the tree-structure is dependent on threshold selections obtained from a statistical analysis of the feature set. This makes the classification method adaptive. The true positive value obtained for this classifier is 90% with a false positive of 10%. The Extended ADWAT method and Fuzzy Membership Functions method using combined features from the epi-illuminance and multi-spectral images further improve the sensitivity and specificity of melanoma diagnosis. The combined feature set with the Extended-ADWAT method gives a true positive of 93.33% with a false positive of 8.88%. The Gaussian Membership Functions give a true positive of 100% with a false positive of 17.77% while the Bell Membership Functions give a true positive of 100% with a false positive of 4.44%
Influence of color spaces over texture characterization
Images are generally represented in the RGB color space. This is the
model commonly used for most cameras and for displaying on computer
screens. Nevertheless, the representation of color images using this color space
has some important drawbacks for image analysis. For example, it is a
non-uniform space, that is, measured color differences are not proportional to
the human perception of such differences. On the other hand, HSI color space is
closer to the human color perception and CIE Lab color space has been defined
to be approximately uniform. In this work, the influence of the color space for
color texture characterization is studied by comparing Lab, HSI, and RGB color
spaces. Their effectiveness is analyzed regarding their influence over two
different texture characterization methods: DFT features and co-occurrence
matrices. The results have shown that involving color information into texture
analysis improves the characterization significantly. Moreover, Lab and HSI
color spaces outperform RG
A Survey On Medical Digital Imaging Of Endoscopic Gastritis.
This paper focuses on researches related to medical digital imaging of endoscopic gastritis
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