Print Email Facebook Twitter Efficient implementation of an audio preprocessing algorithm for SNN keyword spotting Title Efficient implementation of an audio preprocessing algorithm for SNN keyword spotting Author Hijlkema, Sybold (TU Delft Electrical Engineering, Mathematics and Computer Science) Contributor van Leuken, T.G.R.M. (mentor) Wong, J.S.S.M. (graduation committee) Zjajo, Amir (graduation committee) Degree granting institution Delft University of Technology Corporate name Delft University of Technology Programme Electrical Engineering | Embedded Systems Date 2021-08-25 Abstract Mobile devices are getting increasingly powerful, becoming compatiblefor an ever increasing set of functionality. Applications based aroundneural networks however still have to offload parts of their computationsto the cloud since current Artificial Neural Networks (ANNs) arestill too computationally expensive for any practical standalone use inenergy constrained mobile devices. Developments in the next generationof ANN: Spiking Neural Network (SNN), are expected to bringneural networks directly to the edge. Even though SNNs are becominga reality, they can not (yet) effectively operate on raw sensory inputdata. For this, a preprocessing algorithm can be used to extract low-levelfeatures in an efficient way to boost the neural network efficiency.A parallel can be found in biology with the cochlea that, for audio,provides preprocessing for the brain. Recent research has shown thatan SNN is capable of reaching high classification accuracy when combinedwith an biologically plausible audio preprocessing stage. To beof interest for edge-computing it however also needs to be area andenergy efficient. This thesis will provide the first steps in researchingthe optimal configuration of a specific audio preprocessing algorithmby mapping its current software simulation to embedded hardware.For this purpose the software simulation is analyzed and an efficienthardware implementation is designed. For evaluation a prototype,and its hardware constrained simulation, is developed and optimized. Subject Spiking Neural NetworksAudioPreprocessing To reference this document use: http://resolver.tudelft.nl/uuid:3866cc32-235c-4bb2-a839-4b1e50005f98 Embargo date 2023-08-25 Part of collection Student theses Document type master thesis Rights © 2021 Sybold Hijlkema Files PDF Thesis_Efficient_implemen ... otting.pdf 5.08 MB Close viewer /islandora/object/uuid:3866cc32-235c-4bb2-a839-4b1e50005f98/datastream/OBJ/view