Abstract—Biologically-inspired machine vision algorithms – those that attempt to capture aspects of the computational architecture of the brain – have proven to be a promising class of algorithms for performing a variety of object and face recognition tasks. However these algorithms typically require a large number of arithmetic operations per image frame evaluated. Meanwhile, the increasing ubiquity of inexpensive cameras in a wide array of embedded devices presents an enormous opportunity for the deployment of embedded machine vision systems. As a first step towards an embedded implementation, we consider the main requirements for the design of an embedded processor for biologically-inspired object recognition and demonstrate an FPGA prot...
The demand for computing power steadily increases to enable new and more intelligent functionalities...
Abstract. In this paper, we outline an architecture for supporting real time autonomous vision in sm...
Over the past two decades, the use of low power Field Programmable Gate Arrays (FPGA) for the accele...
Biological vision components like visual attention (VA) algorithms aim to mimic the mechanism of the...
As demands for real-time computer vision applications increase, implementations on alternative archi...
Abstract. Over recent years automated face detection and recognition (FDR) have gained significant a...
Abstract: The paper presents a study of autonomous face recognition systems based on high performanc...
International audienceAttention-based bio-inspired vision can be studied as a different way to consi...
This paper describes the design and implementation of a hardware-software embedded system for face r...
Many recent visual recognition systems can be seen as being composed of multiple layers of convoluti...
Abstract- With the advent of mobile embedded multimedia devices that are required to perform a range...
Over recent years automated face detection and recognition (FDR) have gained significant attention f...
Even though computing systems have increased the number of transistors, the switching speed, and the...
This thesis presents a hybrid system for embedded machine vision combining programmable hardware for...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2011....
The demand for computing power steadily increases to enable new and more intelligent functionalities...
Abstract. In this paper, we outline an architecture for supporting real time autonomous vision in sm...
Over the past two decades, the use of low power Field Programmable Gate Arrays (FPGA) for the accele...
Biological vision components like visual attention (VA) algorithms aim to mimic the mechanism of the...
As demands for real-time computer vision applications increase, implementations on alternative archi...
Abstract. Over recent years automated face detection and recognition (FDR) have gained significant a...
Abstract: The paper presents a study of autonomous face recognition systems based on high performanc...
International audienceAttention-based bio-inspired vision can be studied as a different way to consi...
This paper describes the design and implementation of a hardware-software embedded system for face r...
Many recent visual recognition systems can be seen as being composed of multiple layers of convoluti...
Abstract- With the advent of mobile embedded multimedia devices that are required to perform a range...
Over recent years automated face detection and recognition (FDR) have gained significant attention f...
Even though computing systems have increased the number of transistors, the switching speed, and the...
This thesis presents a hybrid system for embedded machine vision combining programmable hardware for...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2011....
The demand for computing power steadily increases to enable new and more intelligent functionalities...
Abstract. In this paper, we outline an architecture for supporting real time autonomous vision in sm...
Over the past two decades, the use of low power Field Programmable Gate Arrays (FPGA) for the accele...