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2021 ◽  
pp. 162-167
Author(s):  
В.В. Ольшанский ◽  
С.А. Лутков ◽  
С.В. Мартемьянов ◽  
Е.А. Меньшенина

В статье рассматривается способ применения методов сверхбыстрого сканирования в радиолокационных технических соседствах обнаружения систем охраны объектов транспортной инфраструктуры. В основе предлагаемого подхода использована возможность формирования требуемого ракурса зондирования пространства однопозиционной системой со сверхбыстрым сканированием луча антенны в угловом секторе обзора. Опыт эксплуатации систем охраны показывает, что для обеспечения зон безопасности морских терминалов, гидротехнических сооружений, акваторий морских портов и т.п. существенным является организация пространственных зон контроля. Разработана математическая модель формирования требуемой конфигурации зоны обнаружения радиолокационным средством со сверхсканированием на примере участка порта Новороссийск. Полученные аналитические зависимости законов сверхсканирования позволяют учесть сценарии различных ситуаций нарушения безопасности, по которым тревожными считаются факты появления или движения объектов в запрещённом направлении относительно условно заданных границ контролируемой территории. The article considers a method of applying ultra-fast scanning methods in radar technical neighborhoods for detecting security systems for transport infrastructure objects. The proposed approach is based on the possibility of forming the required perspective of space sensing by a single-position system with ultra-fast scanning of the antenna beam in the angular sector of the view. The experience of operating security systems shows that the organization of spatial control zones is essential for ensuring the security zones of sea terminals, hydraulic structures, seaports, etc. A mathematical model of the formation of the required configuration of the detection zone by radar means with superscanning is developed on the example of the port of Novorossiysk section. The obtained analytical dependences of the laws of superscanning allow us to take into account scenarios of various security violation situations, according to which the facts of the appearance or movement of objects in the prohibited direction relative to the conditionally defined boundaries of the controlled territory are considered alarming.


2021 ◽  
Vol 13 (10) ◽  
pp. 1921
Author(s):  
Xu He ◽  
Shiping Ma ◽  
Linyuan He ◽  
Le Ru ◽  
Chen Wang

Oriented object detection in optical remote sensing images (ORSIs) is a challenging task since the targets in ORSIs are displayed in an arbitrarily oriented manner and on small scales, and are densely packed. Current state-of-the-art oriented object detection models used in ORSIs primarily evolved from anchor-based and direct regression-based detection paradigms. Nevertheless, they still encounter a design difficulty from handcrafted anchor definitions and learning complexities in direct localization regression. To tackle these issues, in this paper, we proposed a novel multi-sector oriented object detection framework called MSO2-Det, which quantizes the scales and orientation prediction of targets in ORSIs via an anchor-free classification-to-regression approach. Specifically, we first represented the arbitrarily oriented bounding box as four scale offsets and angles in four quadrant sectors of the corresponding Cartesian coordinate system. Then, we divided the scales and angle space into multiple discrete sectors and obtained more accurate localization information by a coarse-granularity classification to fine-grained regression strategy. In addition, to decrease the angular-sector classification loss and accelerate the network’s convergence, we designed a smooth angular-sector label (SASL) that smoothly distributes label values with a definite tolerance radius. Finally, we proposed a localization-aided detection score (LADS) to better represent the confidence of a detected box by combining the category-classification score and the sector-selection score. The proposed MSO2-Det achieves state-of-the-art results on three widely used benchmarks, including the DOTA, HRSC2016, and UCAS-AOD data sets.


2020 ◽  
Author(s):  
Vincent Savaux ◽  
Luc Le Magoarou

This paper deals with the computation of integrals<br>of centred bivariate Gaussian densities over any domain defined as an angular sector of R^2. Based on an accessible geometrical approach of the problem, we suggest to transform the double integral into a single one, leading to a tractable closed-form expression only involving trigonometric functions. This solution can also be seen as the angular cumulative distribution of bivariate centered Gaussian variables (X,Y). We aim to provide a didactic approach of our results, and we validate them by comparing with those of the literature.


2020 ◽  
Author(s):  
Vincent Savaux ◽  
Luc Le Magoarou

This paper deals with the computation of integrals<br>of centred bivariate Gaussian densities over any domain defined as an angular sector of R^2. Based on an accessible geometrical approach of the problem, we suggest to transform the double integral into a single one, leading to a tractable closed-form expression only involving trigonometric functions. This solution can also be seen as the angular cumulative distribution of bivariate centered Gaussian variables (X,Y). We aim to provide a didactic approach of our results, and we validate them by comparing with those of the literature.


Author(s):  
Xiao Yongsheng ◽  
Huang Lizhen ◽  
Zhou Jianjiang

<p>The aspect sensitivity of high-resolution range profile (HRRP) leads to the anomalous change of the HRRP statistical characteristic, which is one of inextricable problems on the target recognition based on HRRP. Aiming at the HRRP statistical characteristic, an adaptive angular-sector segmentation method is proposed through based on the grey relational mode. Comparing to the equal interval angular-sector segmentation method, the new method improves the recognition performance. And these simulation results of five kinds of aircraft targets HRRPs prove the feasibility and validity.</p>


2017 ◽  
Vol 7 (1) ◽  
pp. 71-79
Author(s):  
Yongsheng Xiao ◽  
Lizhen Huang ◽  
Jianjiang Zhou

Purpose The purpose of this paper is to solve the azimuth sensitivity of a high-resolution range profile (HRRP), which is one of the biggest obstacles faced by a radar automatic target recognition (RATR) system. Design/methodology/approach Aimed at addressing the shortcomings of the equal angular-sector segmentation based on the scatterer model, an adaptive angular-sector segmentation is proposed on the basis of grey incidence analysis (GIA). Findings The main conclusions reached are as follows. First, the adaptive angular-sector segmentation in terms of GIA is suitable for RATR based on the HRRP; and, second, the adaptive angular-sector segmentation based on the type-B degree of grey incidence model is better than the Deng-Si degree of grey incidence model and the degree of grey slope incidence model. Practical implications The outcome obtained in this paper can be selected for the RATR application. Originality/value This paper has been built on the basis of previous research achievements, and a new RATR method of adaptive angular-sector segmentation is presented based on the GIA.


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