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1.
通过分析中高轨目标雷达回波信号特性,给出一种基于空间目标动力学约束的回波信号相参积累方法,介绍了信号积累模式下中高轨道目标的参数测量方法。通过对国内某型号雷达进行中高轨目标探测支路改造及相关试验,获取试验数据并对其进行分析,验证了原理的正确性和方法的可行性。  相似文献   

2.
背景图像差分法是运动目标实时检测中常用的方法,但缺乏背景图像随监视场景光照变化而及时更新的合理方法,限制了该方法的适应性。对此,文章首先提出了一种自适应背景更新方法;然后利用最大类间方差法实现运动目标的自适应阈值分割,并利用基于形态学方法的连通区检测算法检测运动目标;最后以Kalman滤波为运动模型实现对运动目标的连续跟踪。实验结果表明:所提方法可随着光照条件的变化,实时、准确地检测出运动目标并实现稳定跟踪。  相似文献   

3.
近年来,基于可见光图像的目标识别在无人车感知领域得到了广泛应用.然而,可见光图像目标识别无法应用于弱光和黑暗环境.针对于此,提出了一种基于红外视觉/激光雷达融合的目标识别与定位算法.首先,通过基于颜色迁移的数据增强训练方法,提高了红外目标识别算法的泛化性能.继而,提出了一种基于激光雷达修正的单目深度估计方法,通过视觉图...  相似文献   

4.
《中国航空学报》2023,36(1):356-368
Recently, deep learning has been widely utilized for object tracking tasks. However, deep learning encounters limits in tasks such as Autonomous Aerial Refueling (AAR), where the target object can vary substantially in size, requiring high-precision real-time performance in embedded systems. This paper presents a novel embedded adaptiveness single-object tracking framework based on an improved YOLOv4 detection approach and an n-fold Bernoulli probability theorem. First, an Asymmetric Convolutional Network (ACNet) and dense blocks are combined with the YOLOv4 architecture to detect small objects with high precision when similar objects are in the background. The prior object information, such as its location in the previous frame and its speed, is utilized to adaptively track objects of various sizes. Moreover, based on the n-fold Bernoulli probability theorem, we develop a filter that uses statistical laws to reduce the false positive rate of object tracking. To evaluate the efficiency of our algorithm, a new AAR dataset is collected, and extensive AAR detection and tracking experiments are performed. The results demonstrate that our improved detection algorithm is better than the original YOLOv4 algorithm on small and similar object detection tasks; the object tracking algorithm is better than state-of-the-art object tracking algorithms on refueling drogue tracking tasks.  相似文献   

5.
弹道并行计算的设计与实现   总被引:5,自引:0,他引:5  
鲜勇 《飞行力学》2003,21(1):59-61,65
多条弹道并行计算是目前作战仿真,多目标探测等领域所急需解决的问题,利用面向对象的软件设计方法,将弹道计算过程抽象化为多个对象,分别对各种对象进行封装,有效地解决了并行弹道计算中内存混乱,可靠性差等问题,实现了多条弹道并行计算。  相似文献   

6.
江波  屈若锟  李彦冬  李诚龙 《航空学报》2021,42(4):524519-524519
目标检测是提高无人机(UAV)感知能力的关键技术之一,其研究对于无人机的应用有着重要意义。与基于手工特征的传统方法相比,基于卷积神经网络的深度学习方法具有强大的特征学习和表达能力,成为目前目标检测任务的主流算法。近年来,目标检测技术已经在自然场景图像上取得了一系列突破性进展,在无人机领域的研究也逐渐成为热点。首先系统阐述了基于深度学习的目标检测算法的研究进展,并总结了相关算法的优缺点。对常见的航空影像数据集进行了梳理并介绍了迁移学习的方法;从无人机影像背景复杂、目标较小、视场大、目标具有旋转性的特点出发,对无人机目标检测在近期的研究进行了归纳和分析。最后讨论了存在的问题和未来可能的发展方向。  相似文献   

7.
从大系统的复杂性和军事装备系统复杂性方面,在分析基于专家智慧集成构成的群决策问题的基础上,提出军事装备系统模式设计方法,即装备复杂系统模式设计方法三维框架的构建、面向专家智慧集成的设定研讨、基于信息价值链的效果评估以及基于探索性分析方法的装备复杂系统模式优化。  相似文献   

8.
提出了一种基于矩特征和特征光流的运动目标跟踪方法.首先进行角点特征提取,按照提出的基于矩特征的局部范围内匹配角点的策略,完成了序列图像的角点匹配;然后,按照本文提出的光流聚类准则完成了两个图像目标的聚类.仿真实验表明,本文算法在减少计算量的同时可提高跟踪精度,且可克服目标做小角度旋转时的失跟问题.  相似文献   

9.
A method of moving object detection that integrates image gradient information with motion information is described herein. One multi-scale morphological gradient operator is used to detect gradient information. This operator has a very good effect on the detail of the edge location. The result is superior to the traditional method in edge continuity and isotropy. Past approaches have used methods of detection based on motion information and edge information, but this is the first to use a multi-scale morphological gradient operator. The implementation described can operate on lower resolution images under difficult conditions. Novel contributions include: 1. Based on multi-scale morphological gradient operator, this algorithm is robust to noise, object shadow, and illumination. 2. Using interframe difference and only the first two frames, this detection method uses very little computation and is suitable for real-time applications. 3. This method can detect rigid-body or non-rigid-body moving objects among video sequences with complicated backgrounds.  相似文献   

10.
针对如何部署光学探测设备才能更好实现对空间目标的高精度高频度监视问题,考虑光照条件、相对关系及探测性能,构建了天/地基空间目标探测与成像仿真模型;按照轨道特征选取了94颗LEO(Low Earth Orbit,低地球轨道)卫星、63颗GEO(Geosynchronous Earth Orbit,地球同步轨道)卫星和18颗大椭圆轨道卫星,选用春夏秋冬典型季节的特定时间长度,仿真分析了国内地基、南北极科考站、LEO卫星、准GEO卫星等多平台光电手段的位置探测和成像观测能力;比对分析地基平台纬度和季节、天基平台轨道高度和倾角对探测能力的影响得出:南北极科考站相比于国内站点可提高重点季节的探测时效性,98°倾角LEO平台对低轨目标成像时效性方面更具优势,等.在此基础上,提出了我国空间目标光电观测设备天地一体的布局构想.  相似文献   

11.
通过结合目标跟踪与相对定位,在对多帧检测目标进行关联与分析的同时,可以获取其三维信息。但当目标外观特征变换较大时,传统目标跟踪算法较易发生漏匹配或身份变换,而仅依靠对齐点云的相对定位算法较易出现定位失效的情况。针对以上问题,提出了一种基于改进DeepSORT的目标跟踪与定位方法在原始DeepSORT算法中加入基于位置约束的匹配,解决了因外观改变导致的漏匹配问题;在获取跟踪信息的基础上,设计了基于目标运动模型的相对定位方法,解决了图像中目标较小时相对定位不连续且定位精度较低的问题。试验结果表明,与传统DeepSORT算法相比,多目标跟踪准确度提高了5.9%;与仅依靠对齐点云的相对定位算法相比,定位精度提高了62.4%。  相似文献   

12.
A spatio-temporal method for identifying objects contained in an image sequence is presented. The Hidden Markov Model (HMM) technique is used as the classification algorithm, making classification decisions based on a spatio-temporal sequence of observed object features. A five class problem is considered. Classification accuracies of 100% and 99.7%, are obtained for sequences of images generated over two separate regions of viewing positions. HMMs trained on image sequences of the objects moving in opposite directions showed a 98.1% successful classification rate by class and direction of movement. The HMM technique proved robust to image corruption with additive correlated noise and had a higher accuracy than a single-look nearest neighbor method. A real image sequence of one of the objects used was successfully recognized with the HMMs trained on synthetic data. This study shows the temporal changes that observed feature vectors undergo due to object motion hold information that can yield superior classification accuracy when compared with single-frame techniques  相似文献   

13.
We present a new method for automatic target/object classification by using the optimum polarimetric radar signatures of the targets/objects of interest. The state-of-the-art in radar target recognition is based mostly either on the use of single polarimetric pairs or on the four preset pairs of orthogonal polarimetric signatures. Due to these limitations, polarimetric radar processing has been fruitful only in the area of noise suppression and target detection. The use of target separability criteria for the optimal selection of radar signal state of polarizations is addressed here. The polarization scattering matrix is used for the derivation of target signatures at arbitrary transmit and receive polarization states (arbitrary polarization inclination angles and ellipticity angles). Then, an optimization criterion that minimizes the within-class distance and maximizes the between-class metrics is used for the derivation of optimum sets of polarimetric states. The results of the application of this approach on real synthetic aperture radar (SAR) data of military vehicles are obtained. The results show that noticeable improvements in target separability and consequently target classification can be achieved by the use of the optimum over nonoptimum signatures  相似文献   

14.
Image exploitation technology approaches have generally focused on the detection and spatial analysis of stationary groups of objects on the ground using various sensors. While spatial arrangement is clearly necessary in analyzing military formations, it is usually not sufficient. Typically the arrangement must be examined within some context in order to interpret a pattern of deployment. For moving objects the spatial arrangement of the group relative to the direction of motion is key to recognizing the formation. By examining ground moving target indicator (MTI) radar data over time, motion can be inferred and used to establish a context for interpreting the spatial arrangement of the data. New techniques that exploit the multitemporal nature of MTI data are described. The first is a space-time clustering technique that locates compact groups of objects that persist in time. The technique Is an application of Marr and Hildreth's edge detection methodology to the dual problem of region segmentation, or more accurately, volumetric segmentation of space-time. The second technique is based on the use of the Hough transform for recognizing moving formations such as columns, wedges, and lines abreast by analyzing the shape of clustered MTI detections (specifically the orientation of linear arrangements within the group) with respect to their direction of motion. Preliminary results from simulated MTI data sets are presented  相似文献   

15.
The theory of embedded time series is shown applicable for determining a reasonable lower bound on the length of test sequence required for accurate classification of moving objects. Sequentially recorded feature vectors of a moving object form a training trajectory in feature space. Each of the sequences of feature vector components is a time series, and under certain conditions, each of these time series has approximately the same fractal dimension. The embedding theorem may be applied to this fractal dimension to establish a sufficient number of observations to determine the feature space trajectory of the object. It is argued that this number is a reasonable lower bound on test sequence length for use in object classification. Experiments with data corresponding to five military vehicles (observed following a projected Lorenz trajectory on a viewing sphere) show that this bound is indeed adequate  相似文献   

16.
空间目标地基光电探测与识别技术是空间态势感知的主要技术手段之一。首先归纳了空间目标的典型光学特征,分析了用于轨道与光学特征探测与识别的两类光电望远镜特点,梳理了国外空间目标光电探测与识别技术的发展历程,简要总结了空间目标地基光电探测与识别技术和应用需求间的主要问题,展望了空间目标光电探测与识别技术的未来发展方向。  相似文献   

17.
Distributed sensor data fusion with binary decision trees   总被引:1,自引:0,他引:1  
A distributed sensor object recognition scheme that uses object features collected by several sensors is presented. Recognition is performed by a binary decision tree generated from a training set. The scheme does not assume the availability of any probability density functions, thus it is practical for nonparametric object recognition. Simulations have been performed for Gaussian feature objects, and some of the results are presented  相似文献   

18.
基于方差分析的航空发动机风扇叶片外物撞击识别   总被引:1,自引:0,他引:1  
张帅  张强波  张霞妹 《航空学报》2021,42(5):524196-524196
航空发动机工作过程中风扇外物撞击事件的检测与识别对飞机飞行安全至关重要。通过风扇叶片外物撞击试验平台模拟真实发动机受外物撞击的过程,研究风扇外物撞击规律与检测识别方法。针对航空发动机的机载参数和加装振动参数对风扇外物撞击事件识别难度高与识别准确率低的问题,开展了基于非接触风扇叶片叶尖振动测量的外物撞击检测试验,提出了基于非接触叶尖振动位移方差威布尔分布函数极大似然估计与自动门限检测系统的风扇叶片外物撞击自动门限识别方法,并获取了风扇转子不同转速下外物撞击叶尖振动位移方差识别门限值。选取风扇转子转速为3 000 r/min状态下,直径为16 mm、质量为2.9 g的外物弹体撞击风扇叶片的振动位移数据进行分析,并采用高速摄像系统对该方法识别结果的可靠性进行验证,结果表明:基于非接触叶尖振动位移方差分析法能够准确识别风扇叶片外物撞击事件、撞击叶片编号与撞击叶片数。  相似文献   

19.
《中国航空学报》2020,33(6):1747-1755
A method of multi-block Single Shot MultiBox Detector (SSD) based on small object detection is proposed to the railway scene of unmanned aerial vehicle surveillance. To address the limitation of small object detection, a multi-block SSD mechanism, which consists of three steps, is designed. First, the original input images are segmented into several overlapped patches. Second, each patch is separately fed into an SSD to detect the objects. Third, the patches are merged together through two stages. In the first stage, the truncated object of the sub-layer detection result is spliced. In the second stage, a sub-layer suppression and filtering algorithm applying the concept of non-maximum suppression is utilized to remove the overlapped boxes of sub-layers. The boxes that are not detected in the main-layer are retained. In addition, no sufficient labeled training samples of railway circumstance are available, thereby hindering the deployment of SSD. A two-stage training strategy leveraging to transfer learning is adopted to solve this issue. The deep learning model is preliminarily trained using labeled data of numerous auxiliaries, and then it is refined using only a few samples of railway scene. A railway spot in China, which is easily damaged by landslides, is investigated as a case study. Experimental results show that the proposed multi-block SSD method produces an overall accuracy of 96.6% and obtains an improvement of up to 9.2% compared with the traditional SSD.  相似文献   

20.
The methods for combining multiple classifiers based on belief functions require to work with a common and complete(closed) Frame of Discernment(Fo D) on which the belief functions are defined before making their combination. This theoretical requirement is however difficult to satisfy in practice because some abnormal(or unknown) objects that do not belong to any predefined class of the Fo D can appear in real classification applications. The classifiers learnt using different attributes inform...  相似文献   

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