Despite recent improvements, the computing capability of Edge Computing devices is still inferior to high-end servers, so special methodologies are required to consider the computing environment while developing algorithms. In the present work, we propose a hybrid technique to make the classification of Hyperspectral Images feasible and effective through a Convolutional Neural Network on low-power and high-performance sensor devices. More specifically, we combine two strategies: we initially use the Principal Component Analysis method to discard non-significant wavelengths and shrink the dataset; then, we apply a process acceleration method to boost performance by implementing a form of GPUbased parallelism. The experiments demonstrate the technique’s effectiveness in terms of performance and energy consumption: it enables correct classifications even with low-power devices often deployed on Unmanned Aerial Vehicles, where the network connection is unpredictable or erratic.
Unlocking the potential of edge computing for hyperspectral image classification: An efficient low-energy strategy / De Lucia, Gianluca; Lapegna, Marco; Romano, Diego. - In: FUTURE GENERATION COMPUTER SYSTEMS. - ISSN 0167-739X. - 147:(2023), pp. 207-218. [10.1016/j.future.2023.05.003]
Unlocking the potential of edge computing for hyperspectral image classification: An efficient low-energy strategy
De Lucia, Gianluca;Lapegna, Marco
;Romano, Diego
2023
Abstract
Despite recent improvements, the computing capability of Edge Computing devices is still inferior to high-end servers, so special methodologies are required to consider the computing environment while developing algorithms. In the present work, we propose a hybrid technique to make the classification of Hyperspectral Images feasible and effective through a Convolutional Neural Network on low-power and high-performance sensor devices. More specifically, we combine two strategies: we initially use the Principal Component Analysis method to discard non-significant wavelengths and shrink the dataset; then, we apply a process acceleration method to boost performance by implementing a form of GPUbased parallelism. The experiments demonstrate the technique’s effectiveness in terms of performance and energy consumption: it enables correct classifications even with low-power devices often deployed on Unmanned Aerial Vehicles, where the network connection is unpredictable or erratic.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.