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Vision-based Shadow-aided Tree Crown Detection and Classification Algorithm using Imagery from an Unmanned Airborne Vehicle

机译:基于影像的无人飞行器影像辅助树冠检测与分类算法

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We propose a novel algorithm for tree crown detection and classification in aerial images. The algorithm utilises statistical learning and computer vision techniques to identify various types of woody weeds in a natural landscape with aid of their shadow. In remote sensing context, colour spectrum and texture features are commonly used as cues for classification, the shape property of the target is not explored as often due to the image resolution constrain; however due to our relative lower altitude flights the shape of the target and the corresponding shadow could be resolved and is used to provide extra shape feature for detection. The proposed algorithm is divided into detection and classification stages, the purpose of the detection stage is to identify the interest points correspond to high likelihood of tree crown existence, and therefore reduces the search space of the classification stage from the entire image data set to significantly smaller region of interests. The detection stage is further divided into two stages, the first stage segments the image using colour and texture features, the second stage utilises template matching using shape information related to projected shadow of the woody weed, relying on information about the time of day, sun angle and UAV pose information collected by the onboard navigation system. The classification stage uses supervise learning training on the features collection from the region of interests. We present experimental results of the approach using colour vision data collected from a UAV during operations in the Julia Creek in July 2009 and August 2010.
机译:我们提出了一种新的算法,用于航空影像中树冠的检测和分类。该算法利用统计学习和计算机视觉技术借助其阴影来识别自然景观中的各种类型的木本杂草。在遥感背景下,色谱和纹理特征通常用作分类的线索,由于图像分辨率的限制,目标的形状属性不经常被探究。但是由于我们的相对较低的高度飞行,目标的形状和相应的阴影可以解析,并用于提供额外的形状特征以进行检测。所提出的算法分为检测和分类两个阶段,该检测阶段的目的是识别与树冠存在可能性高相对应的兴趣点,从而将分类阶段的搜索空间从整个图像数据集中减少到显着。兴趣范围较小。检测阶段又分为两个阶段,第一个阶段使用颜色和纹理特征对图像进行分割,第二个阶段利用模板匹配,该模板匹配使用与木质杂草的投影阴影有关的形状信息,这取决于有关一天中时间,太阳的信息机载导航系统收集的角度和无人机姿态信息。分类阶段使用对来自感兴趣区域的特征集合的监督学习训练。我们使用2009年7月和2010年8月在朱莉亚克里克(Julia Creek)作战期间从无人机收集的彩色视觉数据,介绍了该方法的实验结果。

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