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Published byEvelyn Sharp Modified over 8 years ago
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Team 5 Wavelets for Image Fusion Xiaofeng “Sam” Fan Jiangtao “Willy” Kuang Jason “Jingsu” West
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Scope Problem Definition Wavelet Transforms Fusion Rules Approach
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Problem Definition Implement a comparison scheme to enable qualitative and quantitative analysis of wavelet transform and fusion rule combinations. Then, with gained knowledge and experience, extend work to novel area.
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Introduction Based on small waves, with varying frequency and limited duration. Multiresolution Focus on the representation and analysis of images at more than one resolution Wavelet Transforms
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What’s the advantage
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What’s the advantage (con)
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2D DWT T = HFH F is input image matrix. H is the transform matrix.
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Wavelet Feature
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Shift Invariant Wavelet Transform There are a number of possible solutions to the shift variance problem. Most of them fall into two parts: a) Limit the sub-band subsampling (CWT, PSDWT) b) Minimising shift variance is to build two wavelet decomposition trees. b) Minimising shift variance is to build two wavelet decomposition trees.
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Image Fusion Schemes
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Or Coefficient-based Activity(CBA) – absolute value or square of coefficient in the MSD representation: A: Weighted average method (WA-WBA): B: Rank filter method (RF-WBA): RBA: Edge detector – region segmentation – labeling algorithm Activity Level Measurement
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Coefficient Grouping Method Coefficients relationship among other frequency bands and other decomposition levels NG: Not associated with each other SG: In the same decomposition scale MG: All the corresponding MSD samples together
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Coefficient Combining Method No Yes Combine the source MSD representations to produce composite MSD representation
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Consistency Verification Considering about the neighboring coefficients in the composite MSD coefficient No consistency verification WBV: use a majority filter in a 3x3 or 5x5 windows used for the neighborhood. RBV: an edge image and a region image are first generated; for region samples we apply the majority filter over the region; for edge, we apply a constraint majority filter – the center sample will not be changed unless it is different from all the neighboring samples
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Experimental Fusion schemes CBA NG CM NV WA-WBA SG WA WBV RF-WBA (MG) (RBV) (RBA) Activity MeasureGroupingCombiningVerification
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Approach Four Phase Implementation Process Generation of test images Constructing Test Architecture Implementing WT/Fusion Rules Analysis/Evaluation of Results Literature Search, Presentations, and Documentation also included
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Schedule Week # Main Tasks Deadlines Week 1 Meet and Organize Week 2 Literature Search / Brainstorm Topic Topic Presentation Week 3 Lit Search / Define Problem & Approach Approach Presentation Week 4 Implement Wavelets and Rules Literature Review Write Up Week 5 Implement Wavelets and Rules Week 6 Complete Implementation Progress Presentation Week 7 Analysis & Evaluation of Results Implementation Write Up Week 8 Extension of Work Week 9 Extension of Work Week 10 Finish Extension and Analysis Final Document & Presentation
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Test Images Test images may be from pictorial, medical, or remote sensing applications
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Smoothed Test Images Gray scale images with different blurred regions
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Other Distortions Varying degree of smoothing Addition of noise Rotation or Misregistration
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Result Analysis/Evaluation Qualitative – visual comparison as a method of cursory evaluation Quantitative – Quality metric for determining accuracy of process
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Extension of Work New topics arise as we implement the comparison scheme Possible topics thus far: Applications of fusion in color images Image screening to enable automated image fusion by best determined method
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Summary Problem has been defined Solid background on wavelets and fusion Approach is in place Schedule has been set Some test images have been generated Brainstorming continues on novel extension
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