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首页> 外文期刊>Current Science: A Fortnightly Journal of Research >Comparison of stochastic gradient-based optimization techniques for nonlinear satellite image coregistration problem
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Comparison of stochastic gradient-based optimization techniques for nonlinear satellite image coregistration problem

机译:基于随机梯度的非线性卫星图像核心核心问题的优化技术的比较

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摘要

Information-oriented intensity-based cost functions are generally used for optimization frameworks in automatic satellite image registration. Optimization mechanics which updates the transform parameters in the iterative loop requires estimation of derivatives of the cost function to set-up update rules that retrieve the deformation model between the image pairs. Application of stochastic approximation of cost function and its derivatives for solving optimization problems while the objective function is non-differentiable or non-smooth or computed with noise is encountered in real-world problems. The known methods of approximation for solving these problems use the idea of stochastic gradient and certain rules of changing the step length for ensuring convergence. In this article, satellite image coregistration problem is chosen for comparing the performance of two important stochastic optimizers like adaptive stochastic gradient descent and simultaneous perturbation stochastic approximation. Coregistration datasets from Resourcesat-2 LISS-4 MX sensor are chosen for different terrains and features to study subpixel accuracies of order better than 1/20th of a pixel achieved in the comparison of two different optimization techniques employed in intensity-based automatic image registration framework.
机译:基于信息的强度的成本函数通常用于自动卫星图像配准中的优化框架。优化力学更新迭代环路中的变换参数需要估计成本函数的衍生工具,以便在图像对之间检索变形模型的设置更新规则。在实际问题中遇到了在物理函数不可差异或非光滑或计算的同时,在求解优化问题的情况下,在解决优化问题的应用及其衍生物的应用。用于解决这些问题的已知方法是使用随机梯度的思想和改变步长的某些规则来确保收敛。在本文中,选择卫星图像核心试卷问题,用于比较两个重要的随机优化器的性能,如自适应随机梯度下降和同时扰动随机近似值。来自ResourceAT-2 Liss-4 MX传感器的CoreGistration数据集选用不同的地形和特征,以研究在基于强度的自动图像登记框架中使用的两种不同优化技术的比较中实现的像素的1/20的子像素精度优于1/20 。

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