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561.
高锡珍  汤亮  崔平远 《宇航学报》2022,43(7):921-929
针对序列图像间视角尺度变化大带来的特征无法检测和识别效率低等问题,提出了多视角多尺度陨石坑特征检测识别方法。基于明暗区域信息和形态学处理实现陨石坑图像特征边缘粗提取,利用快速傅里叶变换计算模板与图像特征的匹配度,从而实现图像特征所在区域粗定位。在此基础上,通过引入惯性测量信息计算图像间重叠面积,更新模板形状,并预测搜索区域,解决了序列图像间视角尺度变换及信息冗余带来的特征无法检测和识别效率低的困难,最终在单一陨石坑区域内实现其精细检测。  相似文献   
562.
《中国航空学报》2023,36(4):400-408
When the existing information does not contain all categories, the Generalized Evidence Theory (GET) can deal with information fusion. However, the question of how to determine the number of categories through GET is still intriguing. To address this question, a modified k-means clustering, named centers initialized clustering is proposed, filling the gap of identification and complement of the frame of discernment. Based on this clustering method, the number of categories is determined. The initialized centers selected by center density keep the cluster results constant, enhancing the stability of clustering results. Besides, constructing Generalized basic Probability Assignment (GBPA) modules in a conservative way improves the reliability of the results. The mass of empty set in combined GBPAs is the indicator of the number of categories. Experiments on real and artificial data sets are conducted to show the effectiveness.  相似文献   
563.
With the development of wireless communication technology, the electromagnetic environment has become more and more complex. Conventional signal identification methods are difficult to accurately identify illegal devices. However, electromagnetic signals have an unavoidable device-specific characteristic unintentionally generated by a transmitter, appearing in the form of an Un Intentional Modulation(UIM), namely Radio Frequency Fingerprint(RFF). RFFs can be used to uniquely identify an emitter ...  相似文献   
564.
《中国航空学报》2022,35(9):35-48
In the past ten years, many high-quality datasets have been released to support the rapid development of deep learning in the fields of computer vision, voice, and natural language processing. Nowadays, deep learning has become a key research component of the Sixth-Generation wireless systems (6G) with numerous regulatory and defense applications. In order to facilitate the application of deep learning in radio signal recognition, in this work, a large-scale real-world radio signal dataset is created based on a special aeronautical monitoring system - Automatic Dependent Surveillance-Broadcast (ADS-B). This paper makes two main contributions. First, an automatic data collection and labeling system is designed to capture over-the-air ADS-B signals in the open and real-world scenario without human participation. Through data cleaning and sorting, a high-quality dataset of ADS-B signals is created for radio signal recognition. Second, we conduct an in-depth study on the performance of deep learning models using the new dataset, as well as comparison with a recognition benchmark using machine learning and deep learning methods. Finally, we conclude this paper with a discussion of open problems in this area.  相似文献   
565.
In recent years, deep learning (DL) methods have proven their efficiency for various computer vision (CV) tasks such as image classification, natural language processing, and object detection. However, training a DL model is expensive in terms of both complexities of the network structure and the amount of labeled data needed. In addition, the imbalance among available labeled data for different classes of interest may also adversely affect the model accuracy. This paper addresses these issues using a new convolutional neural network (CNN) based architecture. The proposed network incorporates both spatial and spectral information that combines two sub-networks: spatial-CNN and spectral-CNN. The spectral-CNN extracts spectral information, while spatial-CNN captures spatial information. Moreover, to make the features more robust, a multiscale spatial CNN architecture is introduced using different kernels. The final feature vector is formed by concatenating the outputs obtained from both spatial-CNN and spectral-CNN. To address the data imbalance problem, a generative adversarial network (GAN) was used to generate data for the underrepresented class. Finally, relatively a shallower network architecture was used to reduce the number of parameters in the network and improve the processing speed. The proposed model was trained and tested on Senitel-2 images for the classification of the debris-covered glacier. The results showed that the proposed method is well-suited for mapping and monitoring debris-covered glaciers at a large scale with high classification accuracy. In addition, we compared the proposed method with conventional machine learning approaches, support vector machine (SVM), random forest (RF) and multilayer perceptron (MLP).  相似文献   
566.
In terms of multiple temporal and spatial scales, massive data from experiments, flow field measurements, and high-fidelity numerical simulations have greatly promoted the rapid development of fluid mechanics. Machine Learning(ML) provides a wealth of analysis methods to extract potential information from a large amount of data for in-depth understanding of the underlying flow mechanism or for further applications. Furthermore, machine learning algorithms can enhance flow information and automat...  相似文献   
567.
随着无线电信号数据海量增加,复杂电磁环境下面临着未知威胁和目标侦察识别复杂度高的问题,本文针对未知无线电信号的特征提取任务,设计了一种混合神经网络以提高目标无线电信号的识别能力。先通过胶囊神经网络对未知信号的空间信息进行提取,再进一步运用门控循环单元提取信号在时间上的特征信息。设计混合网络模型将信号的时间和空间特征相结合,提高对目标信号的分类精度。通过RML2016.04C调制信号数据集,验证了混合神经网络的识别性能。结果表明:当信噪比为6 dB时,混合网络模型对多种不同调制信号的分类精度大于95%。因此,本文所设计的混合神经网络能够有效对不同调制信号进行准确分类。  相似文献   
568.
《中国航空学报》2023,36(8):422-453
An on-machine measuring (OMM) system with a laser displacement sensor (LDS) is designed for measuring free-form surfaces of hypersonic aircraft’s radomes. To improve the measurement accuracy of the OMM system, a novel Iteratively Automatic machine learning Boosted hand-eye Calibration (IABC) method is proposed. Both the hand-eye relationship and LDS measurement errors can be calibrated in one calibration process without any hardware changes via IABC. Firstly, a new objective function is derived, containing analytical parameters of the hand-eye relationship and LDS errors. Then, a hybrid calibration model composed of two kernels is proposed to solve the objective function. One kernel is the analytical kernel designed for solving analytical parameters. Another kernel is the automatic machine learning (AutoML) kernel designed to model LDS errors. The two kernels are connected with stepwise iterations to find the best calibration results. Compared with traditional methods, hand-eye experiments show that IABC reduces the calibration RMSE by about 50%. Verification experiments show that IABC reduces the measurement deviations by about 25%-50% and RMSEs within 40%. Even when the training data are obviously less than the test data, IABC performs well. Experiments demonstrate that IABC is more accurate than traditional hand-eye methods.  相似文献   
569.
陈静  宫黎明 《遥测遥控》2022,43(6):124-135
机器视觉技术凭借其非接触测量、实时性好、可持续工作等优点,在军事领域中有着广阔的应用前景。在对机器视觉光学照明系统、成像系统、视觉信息处理系统等关键技术进行概述的基础上,详细分析了机器视觉技术在军事领域进行典型目标物识别、人员识别、装备缺陷检测等典型场景以及典型军事装备上的应用现状。在此基础上,指出了机器视觉在军事领域的应用,仍然存在视觉传感器硬件系统难以适应极端环境、复杂的军事目标适应性不足、目标识别的实时性难以保证、多传感器融合获取军事目标信息能力缺乏等问题。同时,对机器视觉技术在军事领域应用的未来发展趋势进行了展望,研究分析结果可为机器视觉在军事领域的进一步实用化提供参考。  相似文献   
570.
搅拌摩擦焊常采用无坡口焊缝,焊缝装配质量对搅拌摩擦焊装配质量影响较大,通过焊缝的特征,可以对搅拌摩擦焊缝的装配质量进行评判。线结构光是提取焊缝特征的常用手段,基于结构光传感器扫描获得的焊缝轮廓信息多通过离散的点进行表示,如何高效地从轮廓点中提取焊缝轮廓信息,是焊缝特征识别的新挑战。本文提出一种基于机器视觉的焊缝装配质量评测方法,将离散的轮廓点转换为位图,通过抗锯齿算法提高轮廓直线特征的识别可靠性,并计算对应焊缝的装配质量信息,进而实现对整条焊缝的装配质量的量化评价。与传统的离散点拟合方法相比,本方法具有较为明显的效率优势。  相似文献   
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