166 research outputs found
Information Theoretic Limits on Non-cooperative Airborne Target Recognition by Means of Radar Sensors
The main objective of this research is to demonstrate that information theory, and specifically the concept of mutual information (MI) can be used to predict the maximum target recognition performance for a given radar concept in combination with a given set of targets of interest. This approach also allows for the direct comparison of disparate approaches to designing a radar concept which is capable of target recognition without resorting to choosing specific feature extraction and classification algorithms. The main application area of the study is the recognition of fighter type aircraft using surface based radar systems, although the results are also applicable to airborne radars. Information theoretic concepts are developed mathematically for the analysis of the radar target recognition problem. The various forms of MI required for this application are derived in detail and are tested rigorously against results from digital communication theory. The results are also compared to Shannon’s channel capacity bound, which is the fundamental limit on the amount of information which can be transmitted over a channel. Several sets of simulation based experiments were conducted to demonstrate the insights achievable by applying MI concepts to quantitatively predict the maximum achievable performance of disparate approaches to the radar target recognition problem. Asymptotic computational electromagnetic code was applied to calculate the target’s response to the radar signal for freely available geometrical models of fighter aircraft. The calculated target responses were then used to quantify the amount of information which is transmitted back to the radar about the target as a function of signal to noise ratio (SNR). The information content of the F-14, F-15 and F-16 were evaluated for a 480 MHz bandwidth waveform at 10 GHz as a baseline. Several ultra-wideband (UWB) waveforms, spanning 2-10 GHz, 10- 18 GHz and 2-18 GHz, but which were highly range ambiguous, were evaluated and showed SNR gains of 0.5-2 dB relative to the baseline. The effect of sensing the full polarimetric response of an F-18 and F-35 was evaluated and SNR gains of 5-7 dB over a single linear polarisation were measured. A Boeing 707 scale model (1:25) was measured in the University of Pretoria’s compact range spanning 2-18 GHz and gains of 2 dB were observed between single and dual linear polarisations. This required numerical integration in 8004 dimensions, demonstrating the stability of the MI estimation algorithm in high dimensional signal spaces. The information gained by including the difference channel signal of an X-band monopulse radar for the F-14 data set was approximately 3 dB at 50 km and increased to 4.5 dB at 2 km due to the increased target extent relative to the antenna pattern. This experiment necessitated the use of target profiles which were matched to the range of the target to achieve maximum information transfer. Experiments were conducted to evaluate the loss in information due to envelope processing. For the baseline data set, SNR losses in the region of 7 dB were measured. Linear pre-processing using the fast Fourier transform (FFT) and principal component analysis (PCA), before envelope processing, were compared and the PCA algorithm outperformed the FFT by approximately 1 dB at high MI values. Finally, the expression for multi-target MI was applied in conjunction with Fano’s inequality to predict the probability of incorrectly classifying a target. Probability of error is a critical parameter for a radar user. For the baseline data set, at P(error) = 0.001, maximum losses in the region of 0.6 to 0.9 dB were measured. This result shows that these targets are easily separable in the signal space. This study was only the proverbial “tip of the iceberg” and future research could extend the results and applications of the techniques developed. The types of targets and configurations of the individual targets could be increased and analysed. The analysis should also be extended to describe effects internal to the radar such as phase noise, spurious signals and analogue to digital converters and external effects such as clutter and multipath. The techniques could also be applied to quantify the gains in target recognition performance achievable for multistatic radar, multiple input multiple output (MIMO) radar and more exotic concepts, such as the fusion of data from multiple monostatic microwave radars with multi-receiver multi-band passive bistatic radar (PBR) data
Motion-compensation for complementary-coded medical ultrasonic imaging
Ultrasound is a well-established tool for medical imaging. It is non-invasive and relatively
inexpensive, but the severe attenuation caused by propagation through tissue limits its effectiveness
for deep imaging. In recent years, the ready availability of fast, inexpensive computer
hardware has facilitated the adoption of signal coding and compression techniques to counteract
the effects of attenuation. Despite widespread investigation of the topic, published opinions
vary as to the relative suitability of discrete-phase-modulated and frequency-modulated (or
continuous-phase-modulated) signals for ultrasonic imaging applications. This thesis compares
the performance of discrete binary-phase coded pulses to that of frequency-modulated pulses
at the higher imaging frequencies at which the effects of attenuation are most severe.
The performance of linear and non-linear frequency modulated pulses with optimal side-lobe
characteristics is compared to that of complementary binary-phase coded pulses by simulation
and experiment. Binary-phase coded pulses are shown to be more robust to the affects of attenuation
and non-ideal transducers. The comparatively poor performance of frequency-modulated
pulses is explained in terms of the spectral characteristics of the signals and filters required to
reduce side-lobes to levels acceptable for imaging purposes.
In theory, complementary code sets like bi-phase Golay pairs offer optimum side-lobe performance
at the expense of a reduction in frame rate. In practice, misalignment caused by
motion in the medium can have a severe impact on imaging performance. A novel motioncompensated
imaging algorithm designed to reduce the occurrence of motion artefacts and
eliminate the reduction in frame-rate associated with complementary-coding is presented. This
is initially applied to conventional sequential-scan B-mode imaging then adapted for use in
synthetic aperture B-mode imaging. Simulation results are presented comparing the performance
of the motion-compensated sequential-scan and synthetic aperture systems with that of
simulated systems using uncoded and frequency-modulated excitation pulses
Ultra Wideband
Ultra wideband (UWB) has advanced and merged as a technology, and many more people are aware of the potential for this exciting technology. The current UWB field is changing rapidly with new techniques and ideas where several issues are involved in developing the systems. Among UWB system design, the UWB RF transceiver and UWB antenna are the key components. Recently, a considerable amount of researches has been devoted to the development of the UWB RF transceiver and antenna for its enabling high data transmission rates and low power consumption. Our book attempts to present current and emerging trends in-research and development of UWB systems as well as future expectations
Intelligent Sensors for Human Motion Analysis
The book, "Intelligent Sensors for Human Motion Analysis," contains 17 articles published in the Special Issue of the Sensors journal. These articles deal with many aspects related to the analysis of human movement. New techniques and methods for pose estimation, gait recognition, and fall detection have been proposed and verified. Some of them will trigger further research, and some may become the backbone of commercial systems
Multi-Object Tracking System based on LiDAR and RADAR for Intelligent Vehicles applications
El presente Trabajo Fin de Grado tiene como objetivo el desarrollo de un Sistema de Detección y
Multi-Object Tracking 3D basado en la fusión sensorial de LiDAR y RADAR para aplicaciones
de conducción autónoma basándose en algoritmos tradicionales de Machine Learning. La implementación
realizada está basada en Python, ROS y cumple requerimientos de tiempo real.
En la etapa de detección de objetos se utiliza el algoritmo de segmentación del plano RANSAC,
para una posterior extracción de Bounding Boxes mediante DBSCAN. Una Late Sensor Fusion
mediante Intersection over Union 3D y un sistema de tracking BEV-SORT completan la arquitectura
propuesta.This Final Degree Project aims to develop a 3D Multi-Object Tracking and Detection System
based on the Sensor Fusion of LiDAR and RADAR for autonomous driving applications based
on traditional Machine Learning algorithms. The implementation is based on Python, ROS and
complies with real-time requirements. In the Object Detection stage, the RANSAC plane segmentation
algorithm is used, for a subsequent extraction of Bounding Boxes using DBSCAN.
A Late Sensor Fusion using Intersection over Union 3D and a BEV-SORT tracking system complete
the proposed architecture.Grado en Ingeniería en Electrónica y Automática Industria
Biologically-inspired radar sensing
The natural world has an unquantifiable complexity and natural life exhibits remarkable techniques for responding to and interacting with the natural world. This thesis aims to find new approaches to radar systems by exploring the paradigm of biologically-inspired design to find effective ways of using the flexibility of modern radar systems. In particular, this thesis takes inspiration from the astonishing feats of human echolocators and the complex cognitive processes that underpin the human experience. Interdisciplinary research into human echolocator tongue clicks is presented before two biologically-inspired radar techniques are proposed, developed, and analyzed using simulations and experiments. The first radar technique uses the frequency-diversity of a radar system to localize targets in angle, and the second technique uses the degrees-of-freedom accessible to a mobile robotic platform to implement a cognitive radar architecture for obstacle avoidance and navigation
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