Difference between revisions of "Matchbox Tool"
(Trial import from script.) |
(Import from spreadsheet via script.) |
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= Description = | = Description = | ||
− | The Matchbox tool is responsible for finding duplicatre pairs in a collection of digital documents based on SIFT features and SSIM methods. Consequently the tool takes a collection path with associated parameters as input. Currently three scenarios are implemented. These are: | + | The Matchbox tool is responsible for finding duplicatre pairs in a collection of digital documents based on SIFT features and SSIM methods. Consequently the tool takes a collection path with associated parameters as input. Currently three scenarios are implemented. These are: |
− | * Duplicate search in one turn (parameter ‘all’) | + | * Duplicate search in one turn (parameter ‘all’) |
− | * Professional duplicate search (experienced user can execute particular step in ‘FindDuplicates’ workflow) | + | * Professional duplicate search (experienced user can execute particular step in ‘FindDuplicates’ workflow) |
− | * Quick check if two documents are duplicates (based on previous BoW dictionary). | + | * Quick check if two documents are duplicates (based on previous BoW dictionary). |
Further parameters that influence and adjust duplicate analysis are currently investigated. | Further parameters that influence and adjust duplicate analysis are currently investigated. | ||
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Image processing method: | Image processing method: | ||
− | The image processing algorithm can be described in 4 steps: | + | The image processing algorithm can be described in 4 steps: |
1. Document feature extraction | 1. Document feature extraction | ||
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* Run over collection and collect local descriptors in a visual dictionary using Bag-Of-Words (BoW) algorithm | * Run over collection and collect local descriptors in a visual dictionary using Bag-Of-Words (BoW) algorithm | ||
− | 3. Create visual histogram for each image document | + | 3. Create visual histogram for each image document |
4. Detect similar images based on visual histogram and local descriptors. Evaluate similarity score — pair-wise comparison of corresponding keyword frequency histograms for all documents. Conduct structural similarity analysis applying Sturctural SIMilarity (SSIM) approach (1 means identical and 0 means very different) | 4. Detect similar images based on visual histogram and local descriptors. Evaluate similarity score — pair-wise comparison of corresponding keyword frequency histograms for all documents. Conduct structural similarity analysis applying Sturctural SIMilarity (SSIM) approach (1 means identical and 0 means very different) | ||
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Usage: | Usage: | ||
− | FindDuplicates script can be invoked from command line. For standard usage two parameters are required: path to the collection documents and ‘all’. | + | FindDuplicates script can be invoked from command line. For standard usage two parameters are required: path to the collection documents and ‘all’. |
− | scape/pc-qa-matchbox/Python# python2.7 FindDuplicates.py h | + | scape/pc-qa-matchbox/Python# python2.7 FindDuplicates.py h |
usage: FindDuplicates.py [-h] [-threads THREADS|—threads THREADS] [-sdk SDK|—sdk SDK] [-precluster PRECLUSTER|—precluster PRECLUSTER] [-clahe CLAHE|—clahe CLAHE] [-config CONFIG|—config CONFIG] [-featdir FEATDIR|—featdir FEATDIR] [-bowsize BOWSIZE|—bowsize BOWSIZE] [-csv|—csv] [-v] dir ''all,extract,compare,train,bowhist,clean'' | usage: FindDuplicates.py [-h] [-threads THREADS|—threads THREADS] [-sdk SDK|—sdk SDK] [-precluster PRECLUSTER|—precluster PRECLUSTER] [-clahe CLAHE|—clahe CLAHE] [-config CONFIG|—config CONFIG] [-featdir FEATDIR|—featdir FEATDIR] [-bowsize BOWSIZE|—bowsize BOWSIZE] [-csv|—csv] [-v] dir ''all,extract,compare,train,bowhist,clean'' |
Revision as of 21:23, 13 November 2013
Description
The Matchbox tool is responsible for finding duplicatre pairs in a collection of digital documents based on SIFT features and SSIM methods. Consequently the tool takes a collection path with associated parameters as input. Currently three scenarios are implemented. These are:
- Duplicate search in one turn (parameter ‘all’)
- Professional duplicate search (experienced user can execute particular step in ‘FindDuplicates’ workflow)
- Quick check if two documents are duplicates (based on previous BoW dictionary).
Further parameters that influence and adjust duplicate analysis are currently investigated.
Image processing method:
The image processing algorithm can be described in 4 steps:
1. Document feature extraction
- Interest point detection (applying Scale Invariant Feature Transform (SIFT) keypoint extraction)
- Derivation of local feature descriptors (invariant to geometrical or radiometrical distortions)
2. Learning visual dictionary
- Clustering method applied to all SIFT descriptors of all images using k-means algorithm
- Run over collection and collect local descriptors in a visual dictionary using Bag-Of-Words (BoW) algorithm
3. Create visual histogram for each image document
4. Detect similar images based on visual histogram and local descriptors. Evaluate similarity score — pair-wise comparison of corresponding keyword frequency histograms for all documents. Conduct structural similarity analysis applying Sturctural SIMilarity (SSIM) approach (1 means identical and 0 means very different)
- Rotate
- Scale
- Mask
- Overlaying
Usage:
FindDuplicates script can be invoked from command line. For standard usage two parameters are required: path to the collection documents and ‘all’.
scape/pc-qa-matchbox/Python# python2.7 FindDuplicates.py h
usage: FindDuplicates.py [-h] [-threads THREADS|—threads THREADS] [-sdk SDK|—sdk SDK] [-precluster PRECLUSTER|—precluster PRECLUSTER] [-clahe CLAHE|—clahe CLAHE] [-config CONFIG|—config CONFIG] [-featdir FEATDIR|—featdir FEATDIR] [-bowsize BOWSIZE|—bowsize BOWSIZE] [-csv|—csv] [-v] dir all,extract,compare,train,bowhist,clean
User Experiences
currently installed at Austrian National Library
Development Activity