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Automated Image Annotation Using Global Features and Robust Nonparametric Density Estimation

Automated Image Annotation Using Global Features and Robust Nonparametric Density Estimation. Alexei Yavlinsky, Edward Schoeld and Stefan Ruger CIVR 2005. A simple framework for image annotation.

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Automated Image Annotation Using Global Features and Robust Nonparametric Density Estimation

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  1. Automated Image Annotation Using GlobalFeatures and Robust Nonparametric DensityEstimation Alexei Yavlinsky, Edward Schoeld and Stefan Ruger CIVR 2005

  2. A simple framework for image annotation • We want a representation for which the densities are as separable as possible for different annotation classes w • Representations are dense enough for reliable inference from a small sample of images for each class

  3. A simple framework for image annotation • One method of inference is to specify a parametric form a priori for the true distributions of image features for the annotation class w • Another method is to encode all our knowledge about the true distribution • A third method is to adopt a nonparametric estimator of the true density

  4. Nonparametric Density Estimation • x is a vector x1~xd • The positive scalar h, called the bandwidth, reflects how wide a kernel is placed over each data point

  5. Nonparametric Density Estimation • d-dimensional Gaussian kernel • Friedman et al. point out that kernel smoothing may become less effective in high-dimensional spaces

  6. Earth Mover's Distance (EMD) • A signature is a representation of clustered data dened as • for a cluster i, ci is the cluster's centroid and mi is the number of points belonging to that cluster or its mass • Given two such signatures, EMD is dened as the minimum amount of work necessary to transform one signature into the other

  7. Nonparametric Density Estimation • Use EMD for density estimation

  8. Bayesian Image Annotation • Model 1 • Model 2

  9. Image Features • Global Features • The distribution of pixel colour in CIE space • texture features proposed by Tamura • 24-dimensional feature vector combining colour and texture. • Locally Sensitive Features • 9 equal rectangular tiles • 108-dimensional feature vector

  10. Image Features • Image Signatures • We used colour-only signatures for EMD computations • applying simple k-means clustering to pixels in CIELab space and setting k to 16

  11. Performance Evaluation • The Corel Dataset • 5,000 images, each image was assigned 1~5 keywords from a vocabulary of 371 words • 4,500 training images and 500 test images • To optimise the kernel bandwidth parameters we divide the training set into 3800 training images and 700 images on which different bandwidth settings are evaluated

  12. Performance Evaluation • The Getty Dataset • 7,560 images, 5000 training and 2560 test images • Keywords for Getty images come in three different flavours: subjects, concepts and styles. We use subject keywords only • We restricted the range of keywords: occur in fewer than 10% of the images and occur more than 50 times • We pruned specic locations, verbs and abstract nouns

  13. Image Annotation

  14. Ranked Retrieval • For the Corel dataset all 1, 2 and 3 word queries were generated that would yield at least 2 relevant images in the test set • For the Getty dataset we required at least 6 relevant images for any given query set), and generated all possible 1{4 word queries under this constraint

  15. Ranked Retrieval (Corel)

  16. Ranked Retrieval (Getty)

  17. Kernel bandwidth optimisation

  18. Conclusions and Future Work • Presented a simple framework for automated image annotation based on nonparametric density estimation • under this framework very simple global image properties can yield reasonable annotation accuracies • We look forward to exploring global image features outside the colour domain

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