Multiple Instance Hybrid Estimator for Hyperspectral Target Characterization and Sub-pixel Target Detection

نویسندگان

  • Changzhe Jiao
  • Alina Zare
  • Ronald G. McGarvey
چکیده

The Multiple Instance Hybrid Estimator for discriminative target characterization from imprecisely labeled hyperspectral data is presented. In many hyperspectral target detection problems, acquiring accurately labeled training data is difficult. Furthermore, each pixel containing target is likely to be a mixture of both target and non-target signatures (i.e., subpixel targets), making extracting a pure prototype signature for the target class from the data extremely difficult. The proposed approach addresses these problems by introducing a data mixing model and optimizing the response of the hybrid sub-pixel detector within a multiple instance learning framework. The proposed approach iterates between estimating a set of discriminative target and non-target signatures and solving a sparse unmixing problem. After learning target signatures, a signature based detector can then be applied on test data. Both simulated and real hyperspectral target detection experiments show the proposed algorithm is effective at learning discriminative target signatures and achieves superior performance over state-of-theart comparison algorithms.

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عنوان ژورنال:
  • CoRR

دوره abs/1710.11599  شماره 

صفحات  -

تاریخ انتشار 2017