Title :
Optimizing Hopfield Neural Network for Spectral Mixture Unmixing on GPU Platform
Author :
Shaohui Mei ; Mingyi He ; Zhiming Shen
Author_Institution :
Sch. of Electron. & Inf., Northwestern Polytech. Univ., Xi´an, China
Abstract :
The Hopfield neural network (HNN) has been demonstrated to be an effective tool for the spectral mixture unmixing of hyperspectral images. However, it is extremely time consuming for such per-pixel algorithm to be utilized in real-world applications. In this letter, the implementation of a multichannel structure of HNN (named as MHNN) on a graphics processing unit (GPU) platform is proposed. According to the unmixing procedure of MHNN, three levels of parallelism, including thread, block, and stream, are designed to explore the peak computing capacity of a GPU device. In addition, constant and texture memories are utilized to further improve its computational performance. Experiments on both synthetic and real hyperspectral images demonstrated that the proposed GPU-based implementation works on the peak computing ability of a GPU device and obtains several hundred times of acceleration versus the CPU-based implementation while its unmixing performance remains unchanged.
Keywords :
deconvolution; geophysical image processing; geophysics computing; graphics processing units; hyperspectral imaging; neural nets; parallel processing; GPU device; GPU platform; HNN multichannel structure; Hopfield neural network optimisation; MHNN unmixing procedure; block parallelism; graphics processing unit; peak computing capacity; per pixel algorithm; real hyperspectral images; real world applications; spectral mixture unmixing; stream parallelism; synthetic hyperspectral images; thread parallelism; Acceleration; Graphics processing units; Hyperspectral imaging; Instruction sets; Parallel processing; Graphics processing unit (GPU); Hopfield neural network (HNN); spectral mixture unmixing (SMU);
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2013.2279331