99 research outputs found
Temporal unpredictability detection of real-time video sequence
Imperial Users onl
An investigation into adaptive power reduction techniques for neural hardware
In light of the growing applicability of Artificial Neural Network (ANN) in the signal processing field [1] and the present thrust of the semiconductor industry towards lowpower SOCs for mobile devices [2], the power consumption of ANN hardware has become a very important implementation issue. Adaptability is a powerful and useful feature of neural networks. All current approaches for low-power ANN hardware techniques are ‘non-adaptive’ with respect to the power consumption of the network (i.e. power-reduction is not an objective of the adaptation/learning process). In the research work presented in this thesis, investigations on possible adaptive power reduction techniques have been carried out, which attempt to exploit the adaptability of neural networks in order to reduce the power consumption. Three separate approaches for such adaptive power reduction are proposed: adaptation of size, adaptation of network weights and adaptation of calculation precision. Initial case studies exhibit promising results with significantpower reduction
Object detection and recognition with event driven cameras
This thesis presents study, analysis and implementation of algorithms
to perform object detection and recognition using an event-based cam
era. This sensor represents a novel paradigm which opens a wide range
of possibilities for future developments of computer vision. In partic
ular it allows to produce a fast, compressed, illumination invariant
output, which can be exploited for robotic tasks, where fast dynamics
and signi\ufb01cant illumination changes are frequent. The experiments
are carried out on the neuromorphic version of the iCub humanoid
platform. The robot is equipped with a novel dual camera setup
mounted directly in the robot\u2019s eyes, used to generate data with a
moving camera. The motion causes the presence of background clut
ter in the event stream.
In such scenario the detection problem has been addressed with an at
tention mechanism, speci\ufb01cally designed to respond to the presence of
objects, while discarding clutter. The proposed implementation takes
advantage of the nature of the data to simplify the original proto
object saliency model which inspired this work.
Successively, the recognition task was \ufb01rst tackled with a feasibility
study to demonstrate that the event stream carries su\ufb03cient informa
tion to classify objects and then with the implementation of a spiking
neural network. The feasibility study provides the proof-of-concept
that events are informative enough in the context of object classi\ufb01
cation, whereas the spiking implementation improves the results by
employing an architecture speci\ufb01cally designed to process event data.
The spiking network was trained with a three-factor local learning rule
which overcomes weight transport, update locking and non-locality
problem.
The presented results prove that both detection and classi\ufb01cation can
be carried-out in the target application using the event data
Biologically inspired feature extraction for rotation and scale tolerant pattern analysis
Biologically motivated information processing has been an important area of scientific research for decades. The central topic addressed in this dissertation is utilization of lateral inhibition and more generally, linear networks with recurrent connectivity along with complex-log conformal mapping in machine based implementations of information encoding, feature extraction and pattern recognition. The reasoning behind and method for spatially uniform implementation of inhibitory/excitatory network model in the framework of non-uniform log-polar transform is presented. For the space invariant connectivity model characterized by Topelitz-Block-Toeplitz matrix, the overall network response is obtained without matrix inverse operations providing the connection matrix generating function is bound by unity. It was shown that for the network with the inter-neuron connection function expandable in a Fourier series in polar angle, the overall network response is steerable. The decorrelating/whitening characteristics of networks with lateral inhibition are used in order to develop space invariant pre-whitening kernels specialized for specific category of input signals. These filters have extremely small memory footprint and are successfully utilized in order to improve performance of adaptive neural whitening algorithms. Finally, the method for feature extraction based on localized Independent Component Analysis (ICA) transform in log-polar domain and aided by previously developed pre-whitening filters is implemented. Since output codes produced by ICA are very sparse, a small number of non-zero coefficients was sufficient to encode input data and obtain reliable pattern recognition performance
2022 roadmap on neuromorphic computing and engineering
Modern computation based on von Neumann architecture is now a mature cutting-edge science. In the von Neumann architecture, processing and memory units are implemented as separate blocks interchanging data intensively and continuously. This data transfer is responsible for a large part of the power consumption. The next generation computer technology is expected to solve problems at the exascale with 10 calculations each second. Even though these future computers will be incredibly powerful, if they are based on von Neumann type architectures, they will consume between 20 and 30 megawatts of power and will not have intrinsic physically built-in capabilities to learn or deal with complex data as our brain does. These needs can be addressed by neuromorphic computing systems which are inspired by the biological concepts of the human brain. This new generation of computers has the potential to be used for the storage and processing of large amounts of digital information with much lower power consumption than conventional processors. Among their potential future applications, an important niche is moving the control from data centers to edge devices. The aim of this roadmap is to present a snapshot of the present state of neuromorphic technology and provide an opinion on the challenges and opportunities that the future holds in the major areas of neuromorphic technology, namely materials, devices, neuromorphic circuits, neuromorphic algorithms, applications, and ethics. The roadmap is a collection of perspectives where leading researchers in the neuromorphic community provide their own view about the current state and the future challenges for each research area. We hope that this roadmap will be a useful resource by providing a concise yet comprehensive introduction to readers outside this field, for those who are just entering the field, as well as providing future perspectives for those who are well established in the neuromorphic computing community
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