4.7 Article

A Study on the Low-Power Operation of the Spike Neural Network Using the Sensory Adaptation Method

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Engineering, Electrical & Electronic

Spiking Neural Networks-Inspired Signal Detection Based on Measured Body Channel Response

Taewook Kang et al.

Summary: This article presents a signal detection method for human body communication (HBC) using spiking neural networks (SNNs). The experiments show that the proposed SNN structures can improve communication performance and achieve a high detection probability. In addition, the SNN-based preamble detector (SPD) has a wider threshold range compared to conventional correlators, ensuring a high frame detection probability.

IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT (2022)

Article Computer Science, Information Systems

Developing TEI-Aware Ultralow-Power SoC Platforms for IoT End Nodes

Kyuseung Han et al.

Summary: This article discusses the development process for ultralow-power SoCs for Internet-of-Things end nodes, addressing the unique characteristics of ULP circuits and the limitations of TEI-LP techniques. It proposes a new TEI-inspired SoC platform architecture and an electronic design automation tool RVX to accelerate ULP SoC development, showcasing a TIP prototyping chip fabricated in 28-nm FD-SOI technology that achieves up to 35% power savings.

IEEE INTERNET OF THINGS JOURNAL (2021)

Article Engineering, Electrical & Electronic

A Fast and Energy-Efficient SNN Processor With Adaptive Clock/Event-Driven Computation Scheme and Online Learning

Sixu Li et al.

Summary: In this study, a fast and energy-efficient SNN processor with adaptive clock/event-driven computation scheme and online learning capability has been proposed, achieving superior performance compared to several state-of-the-art SNN processors. Implemented techniques such as Adaptive Clock- and Event-Driven Computing Scheme and Neighboring PE Borrowing Technique have significantly reduced computation time and energy consumption, making the processor suitable for real-time and energy-constrained applications.

IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS I-REGULAR PAPERS (2021)

Article Engineering, Electrical & Electronic

Advancing Neuromorphic Computing With Loihi: A Survey of Results and Outlook

Mike Davies et al.

Summary: Neuromorphic computing aims to develop chips inspired by biological neural circuits to process new knowledge, adapt, behave, and learn in real time at low power levels, with recent advancements showing promising results with Intel's Loihi processor. Compelling neuromorphic networks using spike-based hardware demonstrate significantly lower latency and energy consumption compared to state-of-the-art conventional approaches, solving diverse problems representative of brain-like computation.

PROCEEDINGS OF THE IEEE (2021)

Article Computer Science, Artificial Intelligence

Personalised predictive modelling with brain-inspired spiking neural networks of longitudinal MRI neuroimaging data and the case study of dementia

Maryam Doborjeh et al.

Summary: The study proposed a method using deep learning algorithms in brain-inspired neural networks to build personalized predictive models to accurately detect, understand, and predict dynamic changes in an individual's brain function. Experimental results demonstrated the accuracy and effectiveness of the method on MRI data.

NEURAL NETWORKS (2021)

Proceedings Paper Computer Science, Artificial Intelligence

Spike timing-based unsupervised learning of orientation, disparity, and motion representations in a spiking neural network

Thomas Barbier et al.

Summary: Researchers have proposed a network that learns visual representations similar to cells in the primary visual cortex of mammals from the input of two event-based vision sensors using leaky integrate and fire neurons. Through the combination of spike timing-dependent plasticity and homeostatic mechanisms, the network learns visual feature detectors for orientation, disparity, and motion in a fully unsupervised fashion.

2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS, CVPRW 2021 (2021)

Article Computer Science, Hardware & Architecture

TEI-ULP: Exploiting Body Biasing to Improve the TEI-Aware Ultralow Power Methods

Woojoo Lee et al.

IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS (2019)

Proceedings Paper Computer Science, Theory & Methods

A Systolic SNN Inference Accelerator and its Co-optimized Software Framework

Shasha Guo et al.

GLSVLSI '19 - PROCEEDINGS OF THE 2019 ON GREAT LAKES SYMPOSIUM ON VLSI (2019)

Article Computer Science, Hardware & Architecture

Loihi: A Neuromorphic Manycore Processor with On-Chip Learning

Mike Davies et al.

IEEE MICRO (2018)

Article Computer Science, Artificial Intelligence

STDP-based spiking deep convolutional neural networks for object recognition

Saeed Reza Kheradpisheh et al.

NEURAL NETWORKS (2018)

Article Computer Science, Artificial Intelligence

Fast unsupervised learning for visual pattern recognition using spike timing dependent plasticity

Daqi Liu et al.

NEUROCOMPUTING (2017)

Article Computer Science, Hardware & Architecture

True North: Design and Tool Flow of a 65 mW 1 Million Neuron Programmable Neurosynaptic Chip

Filipp Akopyan et al.

IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS (2015)

Article Mathematical & Computational Biology

Unsupervised learning of digit recognition using spike-timing-dependent plasticity

Peter U. Diehl et al.

FRONTIERS IN COMPUTATIONAL NEUROSCIENCE (2015)

Article Engineering, Electrical & Electronic

Neurogrid: A Mixed-Analog-Digital Multichip System for Large-Scale Neural Simulations

Ben Varkey Benjamin et al.

PROCEEDINGS OF THE IEEE (2014)

Article Engineering, Electrical & Electronic

Immunity to Device Variations in a Spiking Neural Network With Memristive Nanodevices

Damien Querlioz et al.

IEEE TRANSACTIONS ON NANOTECHNOLOGY (2013)

Article Biochemical Research Methods

Bayesian Computation Emerges in Generic Cortical Microcircuits through Spike-Timing-Dependent Plasticity

Bernhard Nessler et al.

PLOS COMPUTATIONAL BIOLOGY (2013)

Article Computer Science, Cybernetics

Role of spike-frequency adaptation in shaping neuronal response to dynamic stimuli

Simon Peter Peron et al.

BIOLOGICAL CYBERNETICS (2009)

Article Computer Science, Artificial Intelligence

Spike-timing-dependent plasticity in balanced random networks

Abigail Morrison et al.

NEURAL COMPUTATION (2007)

Article Neurosciences

Triplets of spikes in a model of spike timing-dependent plasticity

Jean-Pascal Pfister et al.

JOURNAL OF NEUROSCIENCE (2006)

Article Computer Science, Artificial Intelligence

Which model to use for cortical spiking neurons?

EM Izhikevich

IEEE TRANSACTIONS ON NEURAL NETWORKS (2004)

Article Computer Science, Artificial Intelligence

Simple model of spiking neurons

EM Izhikevich

IEEE TRANSACTIONS ON NEURAL NETWORKS (2003)