With super-resolution optical microscopy, it is now possible to observe molecular interactions in living cells. The obtained images have a very high spatial precision but their overall quality can vary a lot depending on the structure of interest and the imaging parameters. Moreover, evaluating this quality is often difficult for non-expert users. In this work, we tackle the problem of learning the quality function of superresolution images from scores provided by experts. More specifically, we are proposing a system based on a deep neural network that can provide a quantitative quality measure of a STED image of neuronal structures given as input. We conduct a user study in order to evaluate the quality of the predictions of the neural network against those of a human expert. Results show the potential while highlighting some of the limits of the proposed approach.
CITATION STYLE
Robitaille, L. É., Durand, A., Gardner, M. A., Gagné, C., De Koninck, P., & Lavoie-Cardinal, F. (2018). Learning to become an expert: Deep networks applied to super-resolution microscopy. In Proceedings of the 30th Innovative Applications of Artificial Intelligence Conference, IAAI 2018 (pp. 7805–7810). The AAAI Press. https://doi.org/10.1609/aaai.v32i1.11426
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