@article{Korsch18:Defense, type = {article}, key = {Korsch18:Defense}, title = {In Defense of Active Part Selection for Fine-Grained Classification}, author = {Dimitri Korsch and Joachim Denzler}, journal = {Pattern Recognition and Image Analysis. Advances in Mathematical Theory and Applications (PRIA)}, year = {2018}, number = {4}, pages = {658-663}, volume = {28}, abstract = {Fine-grained classification is a recognition task where subtle differences distinguish between different classes. To tackle this classification problem, part-based classification methods are mostly used. Part-based methods learn an algorithm to detect parts of the observed object and extract local part features for the detected part regions. In this paper we show that not all extracted part features are always useful for the classification. Furthermore, given a part selection algorithm that actively selects parts for the classification we estimate the upper bound for the fine-grained recognition performance. This upper bound lies way above the current state- of-the-art recognition performances which shows the need for such an active part selection method. Though we do not present such an active part selection algorithm in this work, we propose a novel method that is required by active part selection and enables sequential part- based classification. This method uses a support vector machine (SVM) ensemble and allows to classify an image based on arbitrary number of part features. Additionally, the training time of our method does not increase with the amount of possible part features. This fact allows to extend the SVM ensemble with an active part selection component that operates on a large amount of part feature proposals without suffering from increasing training time.}, doi = {10.1134/S105466181804020X}, groups = {finegrained,featurelearning}, publisher = {Springer}, url = {https://link.springer.com/article/10.1134/S105466181804020X}, }