On the effects of spam filtering and incremental learning for web-supervised visual concept classification

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Date
2016
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Publisher
New York City : Association for Computing Machinery
Abstract

Deep neural networks have been successfully applied to the task of visual concept classification. However, they require a large number of training examples for learning. Although pre-trained deep neural networks are available for some domains, they usually have to be fine-tuned for an envisaged target domain. Recently, some approaches have been suggested that are aimed at incrementally (or even endlessly) learning visual concepts based on Web data. Since tags of Web images are often noisy, normally some filtering mechanisms are employed in order to remove ``spam'' images that are not appropriate for training. In this paper, we investigate several aspects of a web-supervised system that has to be adapted to another target domain: 1.) the effect of incremental learning, 2.) the effect of spam filtering, and 3.) the behavior of particular concept classes with respect to 1.) and 2.). The experimental results provide some insights under which conditions incremental learning and spam filtering are useful.

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Keywords
Deep convolutional neural network, visual concept classiffication, Web-supervised learning
Citation
Springstein, M., & Ewerth, R. (2016). On the effects of spam filtering and incremental learning for web-supervised visual concept classification. New York City : Association for Computing Machinery. https://doi.org//10.1145/2911996.2912072
License
CC BY 4.0 Unported