We propose an ultra-low-power (ULP) image signal processor (ISP) that performs on-the-fly in-processing frame compression/decompression and hierarchical event recognition to exploit the temporal and spatial sparsity in an image sequence. This approach reduces energy consumption spent processing and transmitting unimportant image data to achieve a 16 × imaging system energy gain in an intruder detection scenario. The ISP was fabricated in 40-nm CMOS and consumes only 170 μW at 5 frames/s for neural network-based intruder detection and 192 × compressed image recording
Computer vision on low-power edge devices enables applications including search-and-rescue and secur...
In recent years, neural network accelerators have been shown to achieve both high energy efficiency ...
This paper presents a smart ultra-low power vision system targeted to video surveillance application...
We propose an ultra-low power (ULP) Image Signal Processor (ISP) that performs on-the-fly in-process...
Among thriving cyber physical systems, smart camera applications require to run both image sensors a...
Millimeter-scale embedded sensing systems have unique advantages over larger devices as they are abl...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This dissertation investigates a low-power temporal event encoding imaging sensory system front end ...
In this paper, we present an ultra-low-power smart visual sensor architecture. A 10.6-μW low-resolut...
There has been a tremendous growth in the number of sensors under the paradigm of the Internet of Th...
Many image processing algorithms exist that can accurately detect humans and other objects such as v...
In this study, the authors explore sequential and parallel processing architectures, utilising a cus...
At the University of Bologna, the Microelectronics Research Group has been working on smart data ana...
MasterWe present an advanced algorithm-hardware co-optimization method to design an efficient accele...
In this paper, we present an advanced algorithm-hardware co-optimization method for designing an eff...
Computer vision on low-power edge devices enables applications including search-and-rescue and secur...
In recent years, neural network accelerators have been shown to achieve both high energy efficiency ...
This paper presents a smart ultra-low power vision system targeted to video surveillance application...
We propose an ultra-low power (ULP) Image Signal Processor (ISP) that performs on-the-fly in-process...
Among thriving cyber physical systems, smart camera applications require to run both image sensors a...
Millimeter-scale embedded sensing systems have unique advantages over larger devices as they are abl...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
This dissertation investigates a low-power temporal event encoding imaging sensory system front end ...
In this paper, we present an ultra-low-power smart visual sensor architecture. A 10.6-μW low-resolut...
There has been a tremendous growth in the number of sensors under the paradigm of the Internet of Th...
Many image processing algorithms exist that can accurately detect humans and other objects such as v...
In this study, the authors explore sequential and parallel processing architectures, utilising a cus...
At the University of Bologna, the Microelectronics Research Group has been working on smart data ana...
MasterWe present an advanced algorithm-hardware co-optimization method to design an efficient accele...
In this paper, we present an advanced algorithm-hardware co-optimization method for designing an eff...
Computer vision on low-power edge devices enables applications including search-and-rescue and secur...
In recent years, neural network accelerators have been shown to achieve both high energy efficiency ...
This paper presents a smart ultra-low power vision system targeted to video surveillance application...