Texture analysis and classification with tree-structured wavelet transform.
about
An improved method for liver diseases detection by ultrasound image analysis.Time-frequency feature representation using multi-resolution texture analysis and acoustic activity detector for real-life speech emotion recognition.Computer-assisted detection of infectious lung diseases: a review.Using gene expression data and network topology to detect substantial pathways, clusters and switches during oxygen deprivation of Escherichia coliSparse texture active contour.Detecting abnormality in optic nerve head images using a feature extraction analysis.Second harmonic generation microscopy analysis of extracellular matrix changes in human idiopathic pulmonary fibrosis.Usefulness of texture analysis for computerized classification of breast lesions on mammograms.Coronary arteries segmentation based on the 3D discrete wavelet transform and 3D neutrosophic transformRough-fuzzy clustering and unsupervised feature selection for wavelet based MR image segmentation.A framework for retinal vasculature segmentation based on matched filters.Core samples for radiomics features that are insensitive to tumor segmentation: method and pilot study using CT images of hepatocellular carcinomaSVM-based characterization of liver ultrasound images using wavelet packet texture descriptors.Wavelet-Based Visible and Infrared Image Fusion: A Comparative Study.Retinal identification based on an Improved Circular Gabor Filter and Scale Invariant Feature Transform.Rotation-invariant multiresolution texture analysis using radon and wavelet transformsA new method based on Adaptive Discrete Wavelet Entropy Energy and Neural Network Classifier (ADWEENN) for recognition of urine cells from microscopic images independent of rotation and scaling.Automatic identification of subcellular phenotypes on human cell arrays.Ultrasound image texture analysis for characterizing intramuscular fat content of live beef cattle.Imaging Collagen in Scar Tissue: Developments in Second Harmonic Generation Microscopy for Biomedical ApplicationsComparison of various texture classification methods using multiresolution analysis and linear regression modelling.Detecting spikes of wheat plants using neural networks with Laws texture energy.DWT-based segmentation method for coronary arteries.Automatic Image Registration of Multi-Modal Remotely Sensed Data with Global Shearlet Features.A wavelet-based optimal texture feature set for classification of brain tumours.Design of tree structured matched wavelet for HRV signals of menstrual cycle.Integrated local binary pattern texture features for classification of breast tissue imaged by optical coherence microscopy.A new method based for diagnosis of breast cancer cells from microscopic images: DWEE--JHT.On the impact of smoothing and noise on robustness of CT and CBCT radiomics features for patients with head and neck cancers.Circular Quad-Octagon Bits: Stepwise Image Cubic Spread Authentication AnalysisCLASSIFIER COMBINATION APPLIED FOR UNDERSTANDING OF EYES IMAGESDeterminação de vícios refrativos oculares utilizando Support Vector MachinesLocal directional derivative pattern for rotation invariant texture classificationA Total Variation Model Based on the Strictly Convex Modification for Image DenoisingTexture Classification Using Scattering Statistical and Cooccurrence Features
P2860
Q30418210-2D8A4C28-D585-4DF6-8F65-FD0A79942B35Q30418278-C140522A-D037-4F57-8BA3-27B16BD3255AQ30459495-C4435888-807C-4692-9514-8B6A5A885FFEQ31111982-4D8C4F80-72BF-4EA0-BBF4-379A16E234DCQ33551355-A8CF089E-3014-4FE0-9952-586DDC5295D4Q33915819-B0F32BAB-2AC0-467F-B2D5-431336E89913Q34062562-4009917A-0BCA-419D-B53E-09A7AA56757AQ34599304-7D3659D2-6135-439A-B2D4-1ECADFD9E9C8Q35025841-48C8CD40-81D4-40DE-8304-1DA211C66408Q35306695-01B1B756-AB8F-4C9D-B548-9653C8C40446Q36203261-90C87201-9A07-4A98-A30A-29DD9E687BDBQ36294539-30E5D521-0657-49C2-862E-1ED7CCCB746AQ36829551-25D28AD1-757E-481F-9C5E-83B06615507FQ37068654-5EF76AE0-7F2A-4150-87DD-6A62226A92C0Q37135893-DFF6D953-1CA1-4861-B503-9E524AC1D591Q37142059-97E6012F-F58A-48F0-9600-2927B63991AEQ40168675-17BDF055-149B-4693-9249-4D4CD5246F49Q40549988-4FF1281D-CB90-4367-93A8-9EB1E9ED99E6Q40827094-B0F52136-CAE7-4948-9B9C-02D5DDAC6061Q41574266-9F69595B-556E-436A-9D71-F947F807BFA7Q42015402-596ED78B-222E-4461-BB49-F95F88C5C906Q42377450-86A15976-565C-47FC-8B4F-155DD3566717Q45378134-3222F60B-A938-44A3-AD6D-2F2CE2148F56Q47147064-238EBF52-6379-442B-B5FA-927D87CD7C80Q47754502-8DCF4783-3FE1-4397-8358-DF1AEB0F2E4BQ50681327-9EA7FA19-EA14-498A-9859-3ACEA27A50B3Q50950981-837D7C44-E1DC-4ECD-A57D-6B44E3B8DD99Q51067266-A14877AE-68AC-4342-BAF7-B55082A74C2EQ53808415-7E91AB1E-6725-440F-B800-679F52606CE9Q57657811-BCA74AB7-0C0A-4575-9E5C-CA7DA07798B9Q57740067-FDE07D09-C617-4ACC-BB07-A4916BC7D059Q57740070-EE7CD7AE-769E-431D-988B-5C9BF6E8A194Q57809887-347497B1-1142-472A-B561-D7133E2053B2Q59043049-16EEBBE1-BDA8-4B80-880A-798B8821E346Q59131217-4AC6D868-B3B9-45D7-8564-4539DBC27E69
P2860
Texture analysis and classification with tree-structured wavelet transform.
description
1993 nî lūn-bûn
@nan
1993年の論文
@ja
1993年学术文章
@wuu
1993年学术文章
@zh
1993年学术文章
@zh-cn
1993年学术文章
@zh-hans
1993年学术文章
@zh-my
1993年学术文章
@zh-sg
1993年學術文章
@yue
1993年學術文章
@zh-hant
name
Texture analysis and classification with tree-structured wavelet transform.
@en
Texture analysis and classification with tree-structured wavelet transform.
@nl
type
label
Texture analysis and classification with tree-structured wavelet transform.
@en
Texture analysis and classification with tree-structured wavelet transform.
@nl
prefLabel
Texture analysis and classification with tree-structured wavelet transform.
@en
Texture analysis and classification with tree-structured wavelet transform.
@nl
P356
P1476
Texture analysis and classification with tree-structured wavelet transform.
@en
P304
P356
10.1109/83.242353
P577
1993-01-01T00:00:00Z