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Medical Image Segmentation Using Descriptive Image Features
所属机构名称:中国科学院西安光学精密机械研究所
会议名称:British Machine Vision Conference
时间:2011.8.8
成果类型:会议
相关项目:快速鲁棒迁移子空间算法
作者:
M. Yang|Y. Yuan|X. Li|P. Yan|
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快速鲁棒迁移子空间算法
期刊论文 58
会议论文 34
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Local Learning-Based Image Super-Resolution
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Putting Poses on Manifold for Action Recognition
PUTTING IMAGES ON A MANIFOLD FOR ATLAS-BASED IMAGE SEGMENTATION
Universal NR-IQA Metrics Based on Local Dependency
Linear SVM Classification using Boosting HOG Features for Vehicle Detection in Low-altitude Airborne
Utilizing Homotopy for Single Image Superresolution
Image Denoising via Weight Regression
Local Adaptive Dictionary based Image Denoising
Single-Image Super-Resolution Based on Semi-Supervised Learning
KLT Feature Based Vehicle Detection and Tracking in Airborne Videos
Accelerating Vehicle Detection in Low-altitude Airborne Urban Video
Face Sketch-photo Synthesis based on Support Vector Regression
ROBUST COLOR CORRECTION IN STEREO VISION
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Matrix Completion by Truncated Nuclear Norm Regularization
Sparse Representation for Blind Image Quality Assessment
Local Structure Divergence Index for Image Quality Assessment
A Biological Inspired Features Based Saliency Map
Target-oriented Shape Modeling with Structure Constraint for Image Segmentation
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Image Denoising via Improved Sparse Coding
Local Semi-Supervised Regression for Single-Image Super-Resolution
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Learning Shape Statistics for Hierarchical 3D Medical Image Segmentation
Single Image Super Resolution with High Resolution Dictionary
Multimodal Learning for Multi-label Image Classification
High Quality Intrinsic Images Using Optimization