Automatic Recognition of Chemical Images

作者: Hanan Samet

DOI: 10.1109/ENC.2007.9

关键词:

摘要: Images of chemical molecules can be produced, manipulated, simulated and analyzed using sophisticated software. However, in the process publishing such images into scientific literature, all their significance is lost. Although easily by human expert, they cannot fed back software loose much potential use. We have developed a system that automatically reconstruct information associated to thus rendering them computer readable. benchmarked our against commercially available product also tested it databases several thousand with very encouraging results.

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