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Learning Deep NBNN Representations for Robust Place Categorization

Massimiliano Mancini, Samuel Rota Bulò, Elisa Ricci, Barbara Caputo

Year
2017
Citations
34

Abstract

This letter presents an approach for semantic place categorization using data obtained from RGB cameras. Previous studies on visual place recognition and classification have shown that by considering features derived from pretrained convolutional neural networks (CNNs) in combination with part-based classification models, high recognition accuracy can be achieved, even in the presence of occlusions and severe viewpoint changes. Inspired by these works, we propose to exploit local deep representations, representing images as set of regions applying a Naïve Bayes nearest neighbor (NBNN) model for image classification. As opposed to previous methods, where CNNs are merely used as feature extractors, our approach seamlessly integrates the NBNN model into a fully CNN. Experimental results show that the proposed algorithm outperforms previous methods based on pretrained CNN models and that, when employed in challenging robot place recognition tasks, it is robust to occlusions, environmental and sensor changes.

Keywords

Artificial intelligenceConvolutional neural networkComputer sciencePattern recognition (psychology)CategorizationExploitFeature (linguistics)Set (abstract data type)Contextual image classificationDeep learning

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