Bird Migration with Visual Avian Navigation & Nest Nidification: The Spatial Linear Geometries Georeferencing Functionality

C. Basdekidou
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引用次数: 0

Abstract

Problem: Bird migration (eye): Georeferencing procedure with clues, rules, functionalities, and restrictions, for avian navigation and nest nidification. Literature Knowledge: Computer vision (sensor): Robot self-referencing with the Perspective-n- Point pose estimation technique. Aim: Hypothesis introduction and proving (“The birds also follow the same georeferencing procedure like robots in avian navigation and nest nidification”). Methodology: (a) Reference data, images, and photography acquisition and 4-means layering (eBird dataset, Flickr imagery, CORINE land covering, and Volunteered Geographic Information); (b) Image processing; and (c) GIS spatial overlay analysis. Results: Statistical spatial analysis using data of the GIS overlays (the 4 layers). Correlation matrix (Avian navigation and nest nidification in low-density urban areas as these are affected by spatial linear geometries and land cover types). Conclusion: A statistically satisfactory approach to the introduced hypothesis. Potential Applications: Human spatial cognition and movement behavior; Children’s motor control and coordination.
鸟类迁徙与视觉鸟类导航和巢识别:空间线性几何的地理参考功能
问题:鸟类迁徙(眼睛):有线索、规则、功能和限制的地理参考程序,用于鸟类导航和巢化。文献知识:计算机视觉(传感器):机器人自参考与视角-n点姿态估计技术。目的:假设的介绍和证明(“鸟类在鸟类导航和巢化中也遵循与机器人相同的地理参考程序”)。方法:(a)参考数据、图像和摄影采集和4-means分层(eBird数据集、Flickr图像、CORINE土地覆盖和志愿地理信息);(b)图像处理;(c) GIS空间叠加分析。结果:利用GIS覆盖数据(4层)进行统计空间分析。相关矩阵(鸟类导航和巢化在低密度城市地区,因为它们受到空间线性几何和土地覆盖类型的影响)。结论:引入的假设在统计学上是令人满意的。潜在应用:人类空间认知和运动行为;儿童运动控制和协调能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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