Multi-scale Features for Detection and Segmentation of Rocks in Mars Images

H. Dunlop, D. Thompson, David S. Wettergreen
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引用次数: 47

Abstract

Geologists and planetary scientists will benefit from methods for accurate segmentation of rocks in natural scenes. However, rocks are poorly suited for current visual segmentation techniques - they exhibit diverse morphologies and have no uniform property to distinguish them from background soil. We address this challenge with a novel detection and segmentation method incorporating features from multiple scales. These features include local attributes such as texture, object attributes such as shading and two-dimensional shape, and scene attributes such as the direction of illumination. Our method uses a superpixel segmentation followed by region-merging to search for the most probable groups of superpixels. A learned model of rock appearances identifies whole rocks by scoring candidate superpixel groupings. We evaluate our method's performance on representative images from the Mars Exploration Rover catalog.
火星图像中岩石的多尺度特征检测与分割
地质学家和行星科学家将受益于在自然场景中精确分割岩石的方法。然而,岩石不适合当前的视觉分割技术——它们表现出不同的形态,没有统一的属性来区分它们与背景土壤。我们用一种新的检测和分割方法来解决这一挑战,该方法结合了来自多个尺度的特征。这些特征包括局部属性(如纹理)、对象属性(如阴影和二维形状)以及场景属性(如照明方向)。我们的方法使用超像素分割和区域合并来搜索最可能的超像素组。岩石外观的学习模型通过评分候选超像素分组来识别整个岩石。我们对来自火星探测车目录的代表性图像进行了性能评估。
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