Real-time processing of images and videos is becoming considerably crucial in modern applications of machine learning (ML) and deep neural networks. Having a faster and compressed floating point arithmetic can significantly increase the performance of such applications optimizing memory occupation and transfer of information. In this field, the novel posit number system is very promising. In this paper we exploit posit numbers to evaluate the performance of several machine learning algorithms in real-time image and video processing applications. Future steps will involve further hardware accelerations for native posit operations
The IEEE 754 Standard for Floating-Point Arithmetic has been for decades imple mented in the vast ma...
The high computational complexity, memory footprints, and energy requirements of machine learning mo...
This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative...
Real-time processing of images and videos is becoming considerably crucial in modern applications of...
Nowadays, real-time applications are exploiting DNNs more and more for computer vision an...
With the advent of image processing and computer vision for automotive under real-time constraints, ...
With the arrival of the open-source RISC-V processor architecture, there is the chance to rethink De...
With the arrival of the open-source RISC-V processor architecture, there is the chance to rethink De...
Nowadays, two groundbreaking factors are emerging in neural networks. Firstly, there is the RISC-V o...
With the pervasiveness of deep neural networks in scenarios that bring real-time requirements, there...
With increasing real-time constraints being put on the use of Deep Neural Networks (DNNs) by real-ti...
With the pervasiveness of deep neural networks in scenarios that bring real-time requirements, there...
Posit™ arithmetic is a recent alternative format to the IEEE 754 standard for floating-point numbers...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
The IEEE 754 Standard for Floating-Point Arithmetic has been for decades imple mented in the vast ma...
The high computational complexity, memory footprints, and energy requirements of machine learning mo...
This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative...
Real-time processing of images and videos is becoming considerably crucial in modern applications of...
Nowadays, real-time applications are exploiting DNNs more and more for computer vision an...
With the advent of image processing and computer vision for automotive under real-time constraints, ...
With the arrival of the open-source RISC-V processor architecture, there is the chance to rethink De...
With the arrival of the open-source RISC-V processor architecture, there is the chance to rethink De...
Nowadays, two groundbreaking factors are emerging in neural networks. Firstly, there is the RISC-V o...
With the pervasiveness of deep neural networks in scenarios that bring real-time requirements, there...
With increasing real-time constraints being put on the use of Deep Neural Networks (DNNs) by real-ti...
With the pervasiveness of deep neural networks in scenarios that bring real-time requirements, there...
Posit™ arithmetic is a recent alternative format to the IEEE 754 standard for floating-point numbers...
Modern computational tasks are often required to not only guarantee predefined accuracy, but get the...
The IEEE 754 Standard for Floating-Point Arithmetic has been for decades imple mented in the vast ma...
The high computational complexity, memory footprints, and energy requirements of machine learning mo...
This paper discusses the introduction of an integrated Posit Processing Unit (PPU) as an alternative...