Abstract
Unmanned Aircraft Systems (UAS) have been widely applied for reconnaissance and surveillance by exploiting information collected from the digital imaging payload. The super-resolution (SR) mosaicing of low-resolution (LR) UAS surveillance video frames has become a critical requirement for UAS video processing and is important for further effective image understanding. In this paper we develop a novel super-resolution framework, which does not require the construction of sparse matrices. The proposed method implements image operations in the spatial domain and applies an iterated back-projection to construct super-resolution mosaics from the overlapping UAS surveillance video frames. The Steepest Descent method, the Conjugate Gradient method and the Levenberg-Marquardt algorithm are used to numerically solve the nonlinear optimization problem for estimating a super-resolution mosaic. A quantitative performance comparison in terms of computation time and visual quality of the superresolution mosaics through the three numerical techniques is presented. © 2013 Camargo et al.
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Camargo, A., He, Q., & Palaniappan, K. (2013). Performance evaluations for super-resolution mosaicing on UAS surveillance videos. International Journal of Advanced Robotic Systems, 10. https://doi.org/10.5772/56534
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