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International Workshop on Enabling Science from Big Image Data

This is the Second ASE [Academy of Science & Engineering] International Conference on Big Data Science and Computing. The event seeks: (1) To bring together the community of researchers and scientists conducting science by acquiring and analyzing large volumes of image data; and (2) To leverage existing approaches, frameworks and data sets for establishing shared software repositories, data sets, and big image scalability benchmarks.
When 27 May 2014
from 09:40 AM to 09:40 PM
Where Stanford CA USA
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The workshop brings together the community working on a specific image type of Big Data. Image Big Data have characteristics that can be leveraged in tackling the overarching challenges of Big Data. The workshop would be of interest to all scientific areas that conduct their domain-specific science by (a) acquiring images via measurement instruments that form raster data (e.g., microscopes, video cameras, scanners or telescopes), and (b) analyzing large volumes of image data to discover spatial, temporal and spectral relationships that require large global and precise local information. These scientific areas include cell biology, medical imaging, material science, chemistry, forensic, digital humanities, social science, Earth science, astronomy and physics just to name a few.  The workshop focus is also aligned with the national priorities of several federal agencies presented in a white house release from March 2012[1].

Topics to be addressed by the workshop include:

(1)   Storage and representation of images with large spatial, temporal, and spectral dimensions to enable scientific explorations.

(2)   Interactive visualization, image sampling and information extraction from large image volumes to support decision making and collaborative scientific discoveries

(3)   Seamless transitions of computations from desktop to cluster/cloud computing environments to speed up learning and discoveries.

(4)   Orchestration of on-demand computational measurement services and client-server communication to provide ubiquitous hyperlinking of image data with other information.

(5)   Big Image Data sets in multiple scientific applications to support benchmarking.

More information about this event…