Forensic analysis of nanoparticles is often conducted through the collection and identifi- cation of electron microscopy images to determine the origin of suspected nuclear material. Each image is carefully studied by experts for classification of materials based on texture, shape, and size. Manually inspecting large image datasets takes enormous amounts of time. However, automatic classification of large image datasets is a challenging problem due to the complexity involved in choosing image features, the lack of training data available for effective machine learning methods, and the availability of user interfaces to parse through images. Therefore, a significant need exists for automated and semi-automated methods to help analysts perform accurate image classification in large image datasets. We present INStINCt, our Intelligent Signature Canvas, as a framework for quickly organizing image data in a web based canvas framework. Images are partitioned using small sets of example images, chosen by users, and presented in an optimal layout based on features derived from convolutional neural networks.
Revised: December 2, 2016 |
Published: May 12, 2016
Citation
Jurrus E.R., N.O. Hodas, N.A. Baker, T.P. Marrinan, and M.D. Hoover. 2016.Adaptive Visual Sort and Summary of Micrographic Images of Nanoparticles for Forensic Analysis. In 2016 IEEE International Symposium on Technologies for Homeland Security, May 10-11, 2016, Waltham, MA. Piscataway, New Jersey:IEEE.PNNL-SA-114724.doi:10.1109/THS.2016.7568959