Title:
Design and Optimization of Heterogeneous Feedforward Spiking Neural Network For Spatiotemporal Data Processing

dc.contributor.advisor Mukhopadhyay, Saibal
dc.contributor.author She, Xueyuan
dc.contributor.committeeMember Rozell, Christopher
dc.contributor.committeeMember Raychowdhury, Arijit
dc.contributor.committeeMember Kim, Hyesoon
dc.contributor.committeeMember Krishna, Tushar
dc.contributor.department Electrical and Computer Engineering
dc.date.accessioned 2022-05-18T19:29:48Z
dc.date.available 2022-05-18T19:29:48Z
dc.date.created 2022-05
dc.date.issued 2022-01-31
dc.date.submitted May 2022
dc.date.updated 2022-05-18T19:29:48Z
dc.description.abstract Over recent years, deep neural network (DNN) models have demonstrated break-through performance for many computer vision applications. However, such models often require a large amount of computation resources to operate, creating limiting factors for energy-constrained hardware platforms. Training DNN models also requires a high amount of labeled data, which could be difficult or expensive to acquire. The biologically inspired model of spiking neural network (SNN) is another type of network that is capable of processing computer vision data, and has the potential to achieve higher energy-efficiency than DNN due to its event-driven operations. SNN also has the capability to learn with biologically inspired algorithm that does not require training labels, i.e. unsupervised learning. While good performance has been shown for datasets with spatial-correlation, such as those in image classification tasks, the accuracy of SNN is still below that of DNN when the dataset has a higher level of complexity. This includes spatiotemporal tasks such as video classification and gesture recognition. In this research, we tackle this problem by proposing a design methodology for feedforward SNN that can be trained with either biologically inspired unsupervised learning algorithm or supervised statistical training algorithm, to achieve spatiotemporal data processing. The proposed model shows performance that is parallel to or better than DNN when the amount of labeled training data is limited. We derive theoretical analysis for the proposed design to help optimize network performance, and demonstrate with experimental results that the proposed design can achieve improved performance while using less trainable parameters. For event-based spatiotemporal data, we demonstrate that the efficiency of the proposed network can be further improved with a fully event-driven processing method.
dc.description.degree Ph.D.
dc.format.mimetype application/pdf
dc.identifier.uri http://hdl.handle.net/1853/66531
dc.language.iso en_US
dc.publisher Georgia Institute of Technology
dc.subject Spiking neural network
dc.subject Spatiotemporal data processing
dc.title Design and Optimization of Heterogeneous Feedforward Spiking Neural Network For Spatiotemporal Data Processing
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Mukhopadhyay, Saibal
local.contributor.corporatename School of Electrical and Computer Engineering
local.contributor.corporatename College of Engineering
relation.isAdvisorOfPublication 62df0580-589a-4599-98af-88783123945a
relation.isOrgUnitOfPublication 5b7adef2-447c-4270-b9fc-846bd76f80f2
relation.isOrgUnitOfPublication 7c022d60-21d5-497c-b552-95e489a06569
thesis.degree.level Doctoral
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