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RPC-Based Orthorectification for Satellite Images Using FPGA

机译:使用FPGA的基于RPC的卫星图像正射校正

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摘要

Conventional rational polynomial coefficients (RPC)-based orthorectification methods are unable to satisfy the demands of timely responses to terrorist attacks and disaster rescue. To accelerate the orthorectification processing speed, we propose an on-board orthorectification method, i.e., a field-programmable gate array (FPGA)-based fixed-point (FP)-RPC orthorectification method. The proposed RPC algorithm is first modified using fixed-point arithmetic. Then, the FP-RPC algorithm is implemented using an FPGA chip. The proposed method is divided into three main modules: a reading parameters module, a coordinate transformation module, and an interpolation module. Two datasets are applied to validate the processing speed and accuracy that are achievable. Compared to the RPC method implemented using Matlab on a personal computer, the throughputs from the proposed method and the Matlab-based RPC method are 675.67 Mpixels/s and 61,070.24 pixels/s, respectively. This means that the proposed method is approximately 11,000 times faster than the Matlab-based RPC method to process the same satellite images. Moreover, the root-mean-square errors (RMSEs) of the row coordinate (ΔI), column coordinate (ΔJ), and the distance ΔS are 0.35 pixels, 0.30 pixels, and 0.46 pixels, respectively, for the first study area; and, for the second study area, they are 0.27 pixels, 0.36 pixels, and 0.44 pixels, respectively, which satisfies the correction accuracy requirements in practice.
机译:传统的基于有理多项式系数(RPC)的正射校正方法无法满足对恐怖袭击和灾难救援的及时响应要求。为了加快正射矫正处理速度,我们提出了一种车载正射矫正方法,即基于现场可编程门阵列(FPGA)的定点(FP)-RPC正射矫正方法。首先使用定点算法对提出的RPC算法进行了修改。然后,使用FPGA芯片实现FP-RPC算法。所提出的方法分为三个主要模块:读取参数模块,坐标转换模块和插值模块。应用两个数据集来验证可实现的处理速度和准确性。与在个人计算机上使用Matlab实现的RPC方法相比,所提方法和基于Matlab的RPC方法的吞吐量分别为675.67 Mpixels / s和61,070.24 pixel / s。这意味着所提出的方法比基于Matlab的RPC方法处理相同的卫星图像快大约11,000倍。此外,对于第一研究区域,行坐标(ΔI),列坐标(ΔJ)和距离ΔS的均方根误差(RMSE)分别为0.35像素,0.30像素和0.46像素。对于第二研究区域,它们分别为0.27像素,0.36像素和0.44像素,满足了实际的校正精度要求。

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