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基于网格数据的Poisson积分离散求和改进方法 被引量:4
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作者 李新星 王昊 《大地测量与地球动力学》 CSCD 北大核心 2013年第2期128-131,共4页
针对Poisson迭代法与极坐标模板法存在的缺陷,给出了基于网格数据的Poisson积分离散求和的改进方法,有效地改善了网格数据离散求和的精度。
关键词 网格数据 POISSON积分 极坐标模板法 逆Poisson迭代 重力异常
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Biological object recognition approach using space variant resolution and pigeon-inspired optimization for UAV 被引量:8
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作者 XIN Long XIAN Ning 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2017年第10期1577-1584,共8页
Recognizing the target from a rotated and scaled image is an important and difficult task for computer vision. Visual system of humans has a unique space variant resolution mechanism(SVR) and log-polar transformations... Recognizing the target from a rotated and scaled image is an important and difficult task for computer vision. Visual system of humans has a unique space variant resolution mechanism(SVR) and log-polar transformations(LPT) is a mapping method that is invariant to rotation and scale. Motivated by biological vision, we propose a novel global LPT based template-matching algorithm(GLPT-TM) which is invariant to rotational and scale changes; and with pigeon-inspired optimization(PIO) used to optimize search strategy, a hybrid model of SVR and pigeon-inspired optimization(SVRPIO) is proposed to accomplish object recognition for unmanned aerial vehicles(UAV) with rotational and scale changes of the target. To demonstrate the efficiency, effectiveness and reliability of the proposed method, a series of experiments are carried out. By rotating and scaling the sample image randomly and recognizing the target with the method, the experimental results demonstrate that our proposed method is not only efficient due to the optimization, but effective and accurate in recognizing the target for UAV. 展开更多
关键词 biological vision space variant resolution mechanism (SVR) log-polar transformations (LPT) pigeon-inspiredoptimization (PIO) object recognition
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