Article ID: 15.20180099
This letter presents an energy-efficient VLSI architecture for SVM classification. Instead of accurate calculation, cost-reduced computing elements based on approximative techniques are designed to complete computation-intensive operations in the SVM-based classifier to save energy and resources. Besides, a partial parallel structure is applied to eliminate dimensional constraints for inputs of classifiers and balance between classification speed and energy consumption. We adopt 55-nm CMOS process to implement the proposed design. It occupies 0.0901mm2 area and consumes 15.9mW at operating frequency of 100MHz and from an operating voltage of 1V. Experiment shows that the design provides an area reduction by 41.5% and a significant saving in energy efficiency by 61.8% compared with the baseline model.