Article ID Journal Published Year Pages File Type
530316 Pattern Recognition 2012 13 Pages PDF
Abstract

We propose a new supervised object retrieval method based on the selection of local visual features learned with the BLasso algorithm. BLasso is a boosting-like procedure that efficiently approximates the Lasso path through backward regularization steps. The advantage compared to a classical boosting strategy is that it produces a sparser selection of visual features. This allows us to improve the efficiency of the retrieval and, as discussed in the paper, it facilitates human visual interpretation of the models generated. We carried out our experiments on the Caltech-256 dataset with state-of-the-art local visual features. We show that our method outperforms AdaBoost in effectiveness while significantly reducing the model complexity and the prediction time. We discuss the evaluation of the visual models obtained in terms of human interpretability.

► Applying L1 regularization shrinks the coefficients and prevents from overfitting. ► L1 regularization highlights the most important variables. ► Sparsity helps to produce interpretable visual models. ► Classifying objects with BLasso gives equivalent or better performance than AdaBoost. ► Object retrieval using sparse models favors user interactivity.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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