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1.
The multi-armored target tracking (MATT) plays a crucial role in coordinated tracking and strike. The occlusion and insertion among targets and target scale variation is the key problems in MATT. Most state-of-the-art multi-object tracking (MOT) works adopt the tracking-by-detection strategy, which rely on compute-intensive sliding window or anchoring scheme in detection module and neglect the target scale variation in tracking module. In this work, we proposed a more efficient and effective spatial-temporal attention scheme to track multi-armored target in the ground battlefield. By simulating the structure of the retina, a novel visual-attention Gabor filter branch is proposed to enhance detection. By introducing temporal information, some online learned target-specific Convolutional Neural Networks (CNNs) are adopted to address occlusion. More importantly, we built a MOT dataset for armored targets, called Armored Target Tracking dataset (ATTD), based on which several comparable experiments with state-of-the-art methods are conducted. Experimental results show that the proposed method achieves outstanding tracking performance and meets the actual application requirements.  相似文献   

2.
在使用低频超宽带合成孔径雷达(UWB-SAR)对地雷进行探测的过程中,根据目标电磁散射随方位角和入射角的变化特性,提出一种利用双峰间距和频率凹点特征沿方位向变化的隐马尔科夫模型(HMM)鉴别算法。该算法首先针对目标感兴趣区域(ROI)图像估计其各方位回波响应,然后利用时频原子提取时域双峰间距和频率凹点,进而得到随方位角变化的特征序列,再通过SAR工作时方位角和入射角的变化特点以及训练样本确定HMM参数,并在此基础上计算疑似目标新的特征矢量,采用马氏距离进行判别。实验结果表明了本文所提方法在目标鉴别方面的有效性。  相似文献   

3.
In order to improve the infrared detection and discrimination ability of the smart munition to the dy-namic armor target under the complex background, the multi-line array infrared detection system is established based on the combination of the single unit infrared detector. The surface dimension features of ground armored targets are identified by size calculating solution algorithm. The signal response value and the value of size calculating are identified by the method of fuzzy recognition to make the fuzzy classification judgment for armored target. According to the characteristics of the target signal, a custom threshold de-noising function is proposed to solve the problem of signal preprocessing. The multi-line array infrared detection can complete the scanning detection in a large area in a short time with the characteristics of smart munition in the steady-state scanning stage. The method solves the disadvan-tages of wide scanning interval and low detection probability of single unit infrared detection. By reducing the scanning interval, the number of random rendezvous in the infrared feature area of the upper surface is increased, the accuracy of the size calculating is guaranteed. The experiments results show that in the fuzzy recognition method, the size calculating is introduced as the feature operator, which can improve the recognition ability of the ground armor target with different shape size.  相似文献   

4.
针对无人机对地目标识别过程中的小样本问题以及目标存在的遮挡和混淆情况,提出了一种融合自注意力机制的小样本目标识别模型。在利用元学习思想获取小样本学习能力的基础上,将自注意力机制学习目标内部各部分之间的上下文依赖关系引入模型,从而增强目标表征能力,以解决遮挡和混淆情况下有效特征不足的难题。为验证模型效果,通过对基准数据集和无人机航拍数据进一步加工,构建了遮挡和混淆目标数据集,设置了不同的遮挡程度和背景混淆率。通过在不同数据集上的验证,并与深度学习模型对比,证明提出的模型具有更高的学习效率和识别正确率。  相似文献   

5.
针对红外成像设备对天远距离观测中得到的小目标、强固定模式噪声这一类典型数据,提出基于显著性的红外图像强固定模式噪声抑制算法。对此类图像数据进行特性分析,指出图像中目标区域相对于背景固定模式噪声区域是显著的,利用显著性检测算法分离出图像中目标区域及背景,对不同区域分别采取不同处理,仅基于单幅图像信息实现强固定模式噪声的有效抑制。通过大量小目标、强固定模式噪声红外图像对算法性能进行测试。结果表明,本算法能够准确提取出图像中目标区域,实现图像中强固定模式噪声的有效抑制。  相似文献   

6.
《防务技术》2022,18(11):2083-2096
Ground military target recognition plays a crucial role in unmanned equipment and grasping the battlefield dynamics for military applications, but is disturbed by low-resolution and noisy-representation. In this paper, a recognition method, involving a novel visual attention mechanism-based Gabor region proposal sub-network (Gabor RPN) and improved refinement generative adversarial sub-network (GAN), is proposed. Novel central–peripheral rivalry 3D color Gabor filters are proposed to simulate retinal structures and taken as feature extraction convolutional kernels in low-level layer to improve the recognition accuracy and framework training efficiency in Gabor RPN. Improved refinement GAN is used to solve the problem of blurry target classification, involving a generator to directly generate large high-resolution images from small blurry ones and a discriminator to distinguish not only real images vs. fake images but also the class of targets. A special recognition dataset for ground military target, named Ground Military Target Dataset (GMTD), is constructed. Experiments performed on the GMTD dataset effectively demonstrate that our method can achieve better energy-saving and recognition results when low-resolution and noisy-representation targets are involved, thus ensuring this algorithm a good engineering application prospect.  相似文献   

7.
《防务技术》2020,16(3):737-746
Infrared target intrusion detection has significant applications in the fields of military defence and intelligent warning. In view of the characteristics of intrusion targets as well as inspection difficulties, an infrared target intrusion detection algorithm based on feature fusion and enhancement was proposed. This algorithm combines static target mode analysis and dynamic multi-frame correlation detection to extract infrared target features at different levels. Among them, LBP texture analysis can be used to effectively identify the posterior feature patterns which have been contained in the target library, while motion frame difference method can detect the moving regions of the image, improve the integrity of target regions such as camouflage, sheltering and deformation. In order to integrate the advantages of the two methods, the enhanced convolutional neural network was designed and the feature images obtained by the two methods were fused and enhanced. The enhancement module of the network strengthened and screened the targets, and realized the background suppression of infrared images. Based on the experiments, the effect of the proposed method and the comparison method on the background suppression and detection performance was evaluated, and the results showed that the SCRG and BSF values of the method in this paper had a better performance in multiple data sets, and it’s detection performance was far better than the comparison algorithm. The experiment results indicated that, compared with traditional infrared target detection methods, the proposed method could detect the infrared invasion target more accurately, and suppress the background noise more effectively.  相似文献   

8.
介绍了一种战场数据融合仿真系统的设计与实现方法。该系统由场景设定、信号产生、融合跟踪处理、目标识别、态势与威胁估计与数据库支持等功能子系统组成,模拟了数据融合的整个信息处理流程,包括:主动探测雷达、雷达侦察设备、通信侦察设备和敌我识别器获取敌我目标观测信息、利用多传感器跟踪数据对目标进行融合跟踪、提取辐射源电磁信息特征对敌方目标识别,进而形成态势与威胁估计。最终在Visual C#开发平台上利用MapX和ORACLE开发了战场数据融合仿真系统,并成功应用于实际系统中,取得了较好的效果。  相似文献   

9.
基于AHP-Fuzzy的装甲机械化部队综合信息系统评估   总被引:1,自引:1,他引:0  
考虑到综合信息系统存在大量的模糊信息,很难用精确数学模型描述其内部关系,采用模糊综合评估法对其进行了评估.首先通过对装甲机械化部队综合信息系统的功能需求进行分析,建立了评估指标体系.然后介绍了确定指标权重的AHP法,并建立了对装甲机械化部队综合信息系统进行评估的模糊综合评判模型.最后通过实例对设想中的装甲机械化部队综合信息系统进行了评估,并说明了该模型的可行性.  相似文献   

10.
基于多分辨分析的雷达目标识别方法   总被引:4,自引:1,他引:3       下载免费PDF全文
针对宽带高距离分辨率雷达的工作体制,提出了一种基于多分辨分析和信息综合的目标识别算法。目标特征由小波变换在相邻分辨率上的能量之比的对数构成。利用多分辨分析,将目标特征分解为反映目标结构概貌的低通特征和刻画目标结构细节的高通特征。利用辐射基函数神经网络分别对目标的低通特征和高通特征进行识别判决,然后将基于目标的低通特征和高通特征的判决信息进行综合,得到最终的识别结果  相似文献   

11.
In this paper, based on a bidirectional parallel multi-branch feature pyramid network (BPMFPN), a novel one-stage object detector called BPMFPN Det is proposed for real-time detection of ground multi-scale targets by swarm unmanned aerial vehicles (UAVs). First, the bidirectional parallel multi-branch convolution modules are used to construct the feature pyramid to enhance the feature expression abilities of different scale feature layers. Next, the feature pyramid is integrated into the single-stage object detection framework to ensure real-time performance. In order to validate the effectiveness of the proposed algorithm, experiments are conducted on four datasets. For the PASCAL VOC dataset, the proposed algorithm achieves the mean average precision (mAP) of 85.4 on the VOC 2007 test set. With regard to the detection in optical remote sensing (DIOR) dataset, the proposed algorithm achieves 73.9 mAP. For vehicle detection in aerial imagery (VEDAI) dataset, the detection accuracy of small land vehicle (slv) targets reaches 97.4 mAP. For unmanned aerial vehicle detection and tracking (UAVDT) dataset, the proposed BPMFPN Det achieves the mAP of 48.75. Compared with the previous state-of-the-art methods, the results obtained by the proposed algorithm are more competitive. The experimental results demonstrate that the proposed algorithm can effectively solve the problem of real-time detection of ground multi-scale targets in aerial images of swarm UAVs.  相似文献   

12.
针对复杂防空作战环境下多目标优先级难以准确评估的问题,提出了基于区间直觉模糊集理论的目标优先级求解算法。首先系统分析了影响目标优先级的因素以及各影响因素与目标优先级之间的非线性关系。其次,对区间直觉模糊集的得分函数和精确函数进行了改进,考虑了犹豫度信息对决策结果的影响,并且提出了基于得分函数和精确函数的目标优先级求解算法。最后通过仿真算例验证了算法的有效性。  相似文献   

13.
基于作战仿真的装甲车辆作战效能评估方法   总被引:6,自引:0,他引:6       下载免费PDF全文
在研制开发装甲车辆的过程中需要预先知道设计的装备是否满足未来战场需要,主要是它的作战效能是否能满足要求。为了获得研制中装备的作战效能,较好的办法是建立作战模型进行仿真。在仿真结果的基础上,通过选取作战效能评估的主要评价指标,建立装甲车辆作战效能的一个综合评估模型,得到了作战效能。  相似文献   

14.
基于熵法的炮兵战场目标价值分析   总被引:7,自引:0,他引:7  
目标价值分析是炮兵作战情报信息处理的中心工作。如何从炮兵战场众多的目标情报中确定其价值,并根据作战任务需要选择要射击的目标和确定优先顺序,是炮兵指挥员及其参谋人员的一项重要任务。根据熵法和模糊决策对炮兵战场目标价值进行了分析和排序,为炮兵指挥员的决策行为提供依据。  相似文献   

15.
针对全军装甲装备技术保障信息系统的开发,划分了系统的层次结构,提出了建立技术保障数据仓库的概念,并结合现有各个技术保障信息管理子系统模型,具体规划了面向决策分析的技术保障数据仓库的模型,研究了其实现方法.  相似文献   

16.
本文针对红外成像设备对天远距离观测中得到的小目标、强固定模式噪声这一类典型数据提出基于显著性的红外图像强固定模式噪声抑制算法。文中首先对此类图像数据进行特性分析,指出图像中目标区域相对于背景固定模式噪声区域是显著的,利用显著性检测算法分离出图像中目标区域及背景,对不同区域分别采取不同处理,仅基于单幅图像信息实现强固定模式噪声的有效抑制。最后,通过大量小目标、强固定模式噪声红外图像对算法性能进行测试,结果表明,本算法能够准确提取出图像中目标区域,实现图像中强固定模式噪声的有效抑制。  相似文献   

17.
被动传感器由于采用无源探测,而且制造成本低,体积小,在战场环境中将采用并配置大量的被动传感器来检测目标.不论是主动还是被动式传感器,在实际应用中均存在资源优化配置问题.针对被动传感器的具体应用模型,采取了若干合理近似,得到了在"OR"融合检测条件下,基于最大检测概率的被动传感器优化配置密度计算公式.  相似文献   

18.
《防务技术》2020,16(4):933-946
Target detection in the field of synthetic aperture radar (SAR) has attracted considerable attention of researchers in national defense technology worldwide, owing to its unique advantages like high resolution and large scene image acquisition capabilities of SAR. However, due to strong speckle noise and low signal-to-noise ratio, it is difficult to extract representative features of target from SAR images, which greatly inhibits the effectiveness of traditional methods. In order to address the above problems, a framework called contextual rotation region-based convolutional neural network (RCNN) with multilayer fusion is proposed in this paper. Specifically, aimed to enable RCNN to perform target detection in large scene SAR images efficiently, maximum sliding strategy is applied to crop the large scene image into a series of sub-images before RCNN. Instead of using the highest-layer output for proposal generation and target detection, fusion feature maps with high resolution and rich semantic information are constructed by multilayer fusion strategy. Then, we put forwards rotation anchors to predict the minimum circumscribed rectangle of targets to reduce redundant detection region. Furthermore, shadow areas serve as contextual features to provide extraneous information for the detector identify and locate targets accurately. Experimental results on the simulated large scene SAR image dataset show that the proposed method achieves a satisfactory performance in large scene SAR target detection.  相似文献   

19.
为解决单架无人机在动态战场环境下的测向定位问题,提出了一种基于动态窗口法的单机测向定位航迹优化算法。以最大化Fisher信息矩阵行列式为测向定位评价准则,在由动态探测雷达和静/动障碍构成的动态战场环境中,基于动态窗口法思想,将测向定位航迹优化评价准则由传统的单步最优原则扩展到对多步预测航迹的评价,同时考虑雷达探测和静/动障碍环境对预测航迹的影响,通过滚动时域方法控制无人机最优航向。仿真结果表明,所提方法能够使无人机在有效逃避雷达探测威胁以及规避环境中静/动障碍的条件下保证对目标的高精度测向定位,为解决动态战场环境下的单架无人机测向定位问题提供了新思路。  相似文献   

20.
针对低空复杂场景下红外弱小动目标检测难度大、虚警率高等问题,面向探测系统中高帧频图像实时处理应用需求,提出基于全卷积网络的弱小目标精准检测方法和基于现场可编程逻辑门阵列(field programmable gate array, FPGA)的低时延并行处理方法。采用轻量化全卷积网络对红外图像中弱小目标进行空域检测,对相邻图像帧疑似目标进行时域轨迹关联以进一步降低虚警率。实验结果表明:上述方法相比于五种传统方法在检测率和虚警率性能方面均有显著提升,并在单片FPGA上完成100 Hz图像实时处理,处理时延低于1.8 ms,实现低空复杂场景弱小目标高精度高鲁棒快速实时检测。  相似文献   

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