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针对Bayer真彩色遥感影像进行特征匹配时,彩色描述符的效果与适用性问题一直研究较少。结合Bayer真彩色遥感影像成像变化规律和彩色描述符算法特点,从理论上分析彩色描述符的不变性。提出模拟数据评价、不同类别影像评价、任务总体适用性评价等三种实验方法对彩色描述符适用性进行实验验证和分析。通过理论分析和实验评估,总体上彩色描述符中RGBSIFT算法效果最优,对Bayer真彩色航空影像特征匹配有较好的适用性,并且不同地物属性影像在特征匹配时有不同的最优彩色描述符。 相似文献
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基于压缩感知理论研究了曲线合成孔径雷达的曲线孔径优化和目标三维特征提取。在建立曲线合成孔径雷达回波信号稀疏表示模型的基础上,基于压缩感知采样矩阵设计的不相关原则,给出了曲线孔径优化设计的评价准则,并利用基于全局优化的基追踪方法实现了目标三维特征提取。仿真结果验证了孔径优化评价准则的正确性和基追踪方法在目标特征提取处理中的有效性。 相似文献
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It well known that vehicle detection is an important component of the field of object detection. However, the environment of vehicle detection is particularly sophisticated in practical processes. It is compara-tively difficult to detect vehicles of various scales in traffic scene images, because the vehicles partially obscured by green belts, roadblocks or other vehicles, as well as influence of some low illumination weather. In this paper, we present a model based on Faster R-CNN with NAS optimization and feature enrichment to realize the effective detection of multi-scale vehicle targets in traffic scenes. First, we proposed a Retinex-based image adaptive correction algorithm (RIAC) to enhance the traffic images in the dataset to reduce the influence of shadow and illumination, and improve the image quality. Second, in order to improve the feature expression of the backbone network, we conducted Neural Architecture Search (NAS) on the backbone network used for feature extraction of Faster R-CNN to generate the optimal cross-layer connection to extract multi-layer features more effectively. Third, we used the object Feature Enrichment that combines the multi-layer feature information and the context information of the last layer after cross-layer connection to enrich the information of vehicle targets, and improve the robustness of the model for challenging targets such as small scale and severe occlusion. In the imple-mentation of the model, K-means clustering algorithm was used to select the suitable anchor size for our dataset to improve the convergence speed of the model. Our model has been trained and tested on the UN-DETRAC dataset, and the obtained results indicate that our method has art-of-state detection performance. 相似文献
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由于矢量图匹配中涉及比例变化的匹配算法较少,提出了一种抗小比例变化的影像图与矢量图匹配方法。该方法先对遥感影像进行特征提取,然后与GIS矢量数据进行由局部到整体的动态规划匹配。具体过程为先进行点匹配,寻求坐标变换,再进行线匹配,求得线间Hausdorff距离最小为最优匹配。仿真实例表明该方法能够准确地匹配,并抗比例变化,可行性高。 相似文献
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本文分析了雷达目标识别的方法和技术,结合水声环境和目标的特点,提出了一种用于水下目标识别的特征抽取算法,并以TMS320C25为核心研制了相应的实验样机,在水池中进行了实验,结果表明该方法和系统是可行的。 相似文献
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融合新闻命名实体、新闻标题、新闻重要段落、文本语义等多特征影响,提出基于多特征融合文本聚类的新闻话题发现模型。模型根据新闻的多特征影响,提出一种多特征融合文本聚类方法。该方法针对新闻标题、新闻重要段落等特征因素构建向量空间模型及相似度算法,基于潜在狄利克雷分配模型构建主题空间模型及相似度算法,针对命名实体构建命名实体模型及相似度算法,并将三种相似度算法形成最优融合。基于多特征融合文本聚类方法,模型改进了用于新闻话题发现的Single-Pass算法。实验是在真实新闻数据集上开展的,实验结果表明:该模型有效地提高了新闻话题发现的准确率、召回率和综合评价指标,并具有一定的自适应能力。 相似文献
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对敌意图识别是作战平台指挥决策的重要依据。针对水下平台意图特征的识别问题,通过对军事应用领域意图识别框架的分析,建立了水下平台的意图识别框架,同时分析了水下平台可用意图特征及提取方法,并提出了一种适于水下平台的意图识别方法。该方法为意图识别技术研究提供一定的参考。 相似文献
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Feature extraction is an important part of signal processing, which is significant for signal detection, classification, and recognition. The nonlinear dynamic analysis method can extract the nonlinear characteristics of signals and is widely used in different fields. Reverse dispersion entropy (RDE) proposed by us recently, as a nonlinear dynamic analysis method, has the advantages of fast computing speed and strong anti-noise ability, which is more suitable for measuring the complexity of signal than traditional permutation entropy (PE) and dispersion entropy (DE). Empirical wavelet transform (EWT), based on the theory of wavelet analysis, can decompose a complex non-stationary signal into a number of empirical wavelet functions (EWFs) with compact support set spectrum, which has better decomposition performance than empirical mode decomposition (EMD) and its improved algorithms. Considering the advantages of RDE and EWT, on the one hand, we introduce EWT into the field of underwater acoustic signal processing and fault diagnosis to improve the signal decomposition accuracy; on the other hand, we use RDE as the features of EWFs to improve the signal separability and stability. Finally, we propose a novel signal feature extraction technology based on EWT and RDE in this paper. Experimental results show that the proposed feature extraction technology can effectively extract the complexity features of actual signals. Moreover, it also has higher distinguishing ability for different types of signals than five latest feature extraction technologies. 相似文献
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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