On the Benefit of Synthetic Data for Company Logo Detection

@inproceedings{Eggert2015OnTB,
  title={On the Benefit of Synthetic Data for Company Logo Detection},
  author={Christian Eggert and Anton Winschel and Rainer Lienhart},
  booktitle={ACM Multimedia},
  year={2015}
}
In this paper we explore the benefits of synthetically generated data for the task of company logo detection with deep-learned features in the absence of a large training set. We use pre-trained deep convolutional neural networks for feature extraction and use a set of support vector machines for classifying those features. In order to generate sufficient training examples we synthesize artificial training images. Using a bootstrapping process, we iteratively add new synthesized examples from… CONTINUE READING

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