Deep learning-based object detection technology can efficiently infer results by utilizing graphics processing units (GPU). However, when using general deep learning frameworks in embedded systems and mobile devices, processing functionality is limited. This allows deep learning frameworks such as TensorFlow-Lite (TF-Lite) and TensorRT (TRT) to be optimized for different hardware. Therefore, this paper introduces a performance inference method that fuses the Jetson monitoring tool with TensorFlow and TRT source code on the Nvidia Jetson AGX Xavier platform. In addition, central processing unit (CPU) utilization, GPU utilization, object accuracy, latency, and power consumption of the deep learning framework were compared and analyzed. The mo...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Machine learning is a rapidly growing field that has become more common of late. Because of the dema...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...
Image processing-based artificial intelligence algorithm is a critical task, and the implementation ...
In this paper, we analyze heterogeneous performance exhibited by some popular deep learning software...
Computer vision tasks such as image classification have prevalent use and are greatly aided by the d...
Deep learning is a very computational intensive task. Traditionally GPUs have been used to speed-up ...
The aim of this project is to conduct a study of deep learning on multi-core processors. The study i...
Purpose: Visual perception enables robots to perceive the environment. Visual data is processed usin...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
Deep learning based systems are on the rise as they have shown tremendous potential to extract conce...
Transfer learning is one of the most amazing concepts in machine learning and A.I. Transfer learning...
ISC High Performance: International Conference on High Performance Computing.Ever growing interest a...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
Deep Learning frameworks, such as TensorFlow, MXNet, Chainer, provide many basic building blocks for...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Machine learning is a rapidly growing field that has become more common of late. Because of the dema...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...
Image processing-based artificial intelligence algorithm is a critical task, and the implementation ...
In this paper, we analyze heterogeneous performance exhibited by some popular deep learning software...
Computer vision tasks such as image classification have prevalent use and are greatly aided by the d...
Deep learning is a very computational intensive task. Traditionally GPUs have been used to speed-up ...
The aim of this project is to conduct a study of deep learning on multi-core processors. The study i...
Purpose: Visual perception enables robots to perceive the environment. Visual data is processed usin...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
Deep learning based systems are on the rise as they have shown tremendous potential to extract conce...
Transfer learning is one of the most amazing concepts in machine learning and A.I. Transfer learning...
ISC High Performance: International Conference on High Performance Computing.Ever growing interest a...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
Deep Learning frameworks, such as TensorFlow, MXNet, Chainer, provide many basic building blocks for...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Machine learning is a rapidly growing field that has become more common of late. Because of the dema...
Design of hardware accelerators for neural network (NN) applications involves walking a tight rope a...