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Spectral Skyline Separation: Extended Landmark Databases and Panoramic Imaging

机译:光谱天际线分离:扩展的地标数据库和全景成像

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摘要

Evidence from behavioral experiments suggests that insects use the skyline as a cue for visual navigation. However, changes of lighting conditions, over hours, days or possibly seasons, significantly affect the appearance of the sky and ground objects. One possible solution to this problem is to extract the “skyline” by an illumination-invariant classification of the environment into two classes, ground objects and sky. In a previous study (Insect models of illumination-invariant skyline extraction from UV (ultraviolet) and green channels), we examined the idea of using two different color channels available for many insects (UV and green) to perform this segmentation. We found out that for suburban scenes in temperate zones, where the skyline is dominated by trees and artificial objects like houses, a “local” UV segmentation with adaptive thresholds applied to individual images leads to the most reliable classification. Furthermore, a “global” segmentation with fixed thresholds (trained on an image dataset recorded over several days) using UV-only information is only slightly worse compared to using both the UV and green channel. In this study, we address three issues: First, to enhance the limited range of environments covered by the dataset collected in the previous study, we gathered additional data samples of skylines consisting of minerals (stones, sand, earth) as ground objects. We could show that also for mineral-rich environments, UV-only segmentation achieves a quality comparable to multi-spectral (UV and green) segmentation. Second, we collected a wide variety of ground objects to examine their spectral characteristics under different lighting conditions. On the one hand, we found that the special case of diffusely-illuminated minerals increases the difficulty to reliably separate ground objects from the sky. On the other hand, the spectral characteristics of this collection of ground objects covers well with the data collected in the skyline databases, increasing, due to the increased variety of ground objects, the validity of our findings for novel environments. Third, we collected omnidirectional images, as often used for visual navigation tasks, of skylines using an UV-reflective hyperbolic mirror. We could show that “local” separation techniques can be adapted to the use of panoramic images by splitting the image into segments and finding individual thresholds for each segment. Contrarily, this is not possible for ‘global’ separation techniques.
机译:行为实验的证据表明,昆虫利用天际线作为视觉导航的线索。但是,照明条件的变化(持续数小时,数天甚至可能是四季)会严重影响天空和地面物体的外观。解决此问题的一种可能方法是通过将环境的光照不变分类分为地面物体和天空两类来提取“天际线”。在先前的研究中(从紫外线(紫外线)和绿色通道提取照明不变的天际线的昆虫模型),我们研究了使用可用于许多昆虫(紫外线和绿色)的两种不同颜色通道进行此分割的想法。我们发现,在温带地区的郊区场景中,天际线主要由树木和人造物体(如房屋)主导,对局部图像应用自适应阈值的“局部” UV分割可得出最可靠的分类。此外,与仅使用UV和绿色通道相比,使用仅UV信息进行固定阈值(在几天内记录的图像数据集上进行训练)的“全局”分割仅稍差一些。在本研究中,我们解决了三个问题:首先,为了扩大先前研究中收集的数据集所涵盖的有限环境范围,我们收集了由矿物(石头,沙子,泥土)作为地面物体组成的天际线的其他数据样本。我们可以证明,对于富含矿物质的环境,仅UV分割也可以达到与多光谱(UV和绿色)分割相当的质量。其次,我们收集了各种各样的地面物体,以检查它们在不同光照条件下的光谱特性。一方面,我们发现漫射照明矿物的特殊情况增加了将地面物体与天空可靠分开的难度。另一方面,此地面物体集合的光谱特征很好地覆盖了天际线数据库中收集的数据,由于地面物体种类的增加,我们的发现对于新颖环境的有效性也有所提高。第三,我们使用反射紫外线的双曲线镜收集了天际线的全向图像(通常用于视觉导航任务)。通过将图像分为多个部分并为每个部分找到单独的阈值,我们可以证明“局部”分离技术可以适应全景图像的使用。相反,这对于“全局”分离技术是不可能的。

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