[HTML][HTML] Review of image classification algorithms based on convolutional neural networks
L Chen, S Li, Q Bai, J Yang, S Jiang, Y Miao - Remote Sensing, 2021 - mdpi.com
Image classification has always been a hot research direction in the world, and the
emergence of deep learning has promoted the development of this field. Convolutional …
emergence of deep learning has promoted the development of this field. Convolutional …
A survey on efficient convolutional neural networks and hardware acceleration
Over the past decade, deep-learning-based representations have demonstrated remarkable
performance in academia and industry. The learning capability of convolutional neural …
performance in academia and industry. The learning capability of convolutional neural …
Synaptic plasticity dynamics for deep continuous local learning (DECOLLE)
A growing body of work underlines striking similarities between biological neural networks
and recurrent, binary neural networks. A relatively smaller body of work, however, addresses …
and recurrent, binary neural networks. A relatively smaller body of work, however, addresses …
A generative neural network for maximizing fitness and diversity of synthetic DNA and protein sequences
Engineering gene and protein sequences with defined functional properties is a major goal
of synthetic biology. Deep neural network models, together with gradient ascent-style …
of synthetic biology. Deep neural network models, together with gradient ascent-style …
Exploring the connection between binary and spiking neural networks
S Lu, A Sengupta - Frontiers in neuroscience, 2020 - frontiersin.org
On-chip edge intelligence has necessitated the exploration of algorithmic techniques to
reduce the compute requirements of current machine learning frameworks. This work aims …
reduce the compute requirements of current machine learning frameworks. This work aims …
A review of artificial intelligence in embedded systems
Z Zhang, J Li - Micromachines, 2023 - mdpi.com
Advancements in artificial intelligence algorithms and models, along with embedded device
support, have resulted in the issue of high energy consumption and poor compatibility when …
support, have resulted in the issue of high energy consumption and poor compatibility when …
A survey on optimization techniques for edge artificial intelligence (ai)
C Surianarayanan, JJ Lawrence, PR Chelliah… - Sensors, 2023 - mdpi.com
Artificial Intelligence (Al) models are being produced and used to solve a variety of current
and future business and technical problems. Therefore, AI model engineering processes …
and future business and technical problems. Therefore, AI model engineering processes …
Literature review of deep network compression
Deep networks often possess a vast number of parameters, and their significant redundancy
in parameterization has become a widely-recognized property. This presents significant …
in parameterization has become a widely-recognized property. This presents significant …
The deep learning solutions on lossless compression methods for alleviating data load on IoT nodes in smart cities
Networking is crucial for smart city projects nowadays, as it offers an environment where
people and things are connected. This paper presents a chronology of factors on the …
people and things are connected. This paper presents a chronology of factors on the …
Ordering chaos: Memory-aware scheduling of irregularly wired neural networks for edge devices
Recent advances demonstrate that irregularly wired neural networks from Neural
Architecture Search (NAS) and Random Wiring can not only automate the design of deep …
Architecture Search (NAS) and Random Wiring can not only automate the design of deep …