共查询到19条相似文献,搜索用时 78 毫秒
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通过分析低分辨雷达飞机目标回波波形,提取出低分辨雷达飞机目标架次可资分类的特征参数作为飞机目标架次判别的特征向量。最后,采用模糊极大极小神经网络作为分类器,在低分辨雷达目标识别样机系统对机群目标进行分类识别试验中,验证了所提取特征的有效性。 相似文献
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基于试验所检测到的压力波形,通过分析燃油喷射过程,提取了压力波形的特征参数,着重给出了特征点识别的新算法,井用MATLAB开发了相应软件。最后,根据识别结果,分析了调整参数对特征参数的影响。 相似文献
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基于PCA和BP神经网络的水下目标识别方法研究 总被引:2,自引:0,他引:2
针对被动声纳信号的特点,提出了基于信号线谱特征的主成分分析(PCA)特征选择方法,其优点是从复杂的目标信号中提取目标的特有信息,降低了目标特征维数.将此方法用于实录的三类水下目标数据,采用BP神经网络对目标进行识别分类,仿真结果说明了所提出的方法的正确性和有效性. 相似文献
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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
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文中研究将多特征信息融合技术用于图象目标识别分类的方法,利用图象灰度表面的分形特征与图象的摘特征(非分形特征)所提供的信息进行融合处理,在决策层中运用Dempster-Shafer证据推理理论,并使用决策规则对目标进行分类。在实验中,将经过信息融合分类的结果与单特征独自分类的结果进行比较。结果表明,多特征信息融合的目标识别方法具有良好的稳定性,准确性和可靠性,能够有效地提高图象分类识别系统的精确度与容错性。 相似文献
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基于Dempster组合规则的电子目标识别算法研究 总被引:2,自引:0,他引:2
在军事目标识别中,必须综合考虑目标的电磁辐射信息和红外图像信息,并采用有效的识别算法,才能准确识别电子目标。提出了基于Dempster组合规则的电子目标综合识别方法,完成了基于Dempster组合规则的电子目标自动识别综合处理算法研究,并进行了仿真实验,试验结果表明,该算法是可行的。 相似文献
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作者根据空中雷达目标快速机动的特点,提出了一种利用Mellin变换及双谱估计提取目标特征量,应用最近邻(NN)法则进行综合判决的目标识别方法,并给出了计算机仿真实验结果。结果表明,该方法具有良好的抗噪声能力和较高的识别率。 相似文献
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针对宽带高距离分辨全极化雷达体制,提出了一种基于实时递归神经网络算法的飞机目标自动识别方法,实现了全极化下五类飞机目标的自动识别。实验结果表明,递归神经网络用于飞机目标识别是有效可行的。 相似文献
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本文分析了利用一维距离像进行目标识别的问题。通过对目标相邻的一维距离像进行幅度平方平均处理,得到比较稳定的平均距离像。然后将目标的平均距离像看作二值图像,提取它的矩特征用于分类识别。对三类飞机目标进行分类识别的结果表明该方法是可行的。 相似文献
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《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
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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
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