QDS-SNN integrates quantum neural networks with spiking neural networks via TSA-LIF neurons and QACM to report 99.72% accuracy on GTSRB in 6 steps with 55.77% lower energy than MS-ResNet baseline.
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QDS-SNN: Energy-efficient Quantum Deeply-Supervised Spiking Neural Network Algorithm for Traffic Sign Recognition
QDS-SNN integrates quantum neural networks with spiking neural networks via TSA-LIF neurons and QACM to report 99.72% accuracy on GTSRB in 6 steps with 55.77% lower energy than MS-ResNet baseline.