
Abstract. RPAs (Remotely Piloted Aircrafts) have been used in many Remote Sensing applications, featuring high-quality imaging sensors. In some situations, the images are interpreted in an automated fashion using object-oriented classification. In this case, the first step is segmentation. However, the setting of segmentation parameters such as scale, shape, and compactness may yield too many different segmentations, thus it is necessary to understand the influence of those parameters on the final output. This paper compares 24 segmentation parameter sets by taking into account classification scores. The results indicate that the segmentation parameters exert influence on both classification accuracy and processing time.
Cartography, Technology, Artificial intelligence, Scale-space segmentation, Environmental Engineering, Scale (ratio), Ocean Engineering, Pattern recognition (psychology), Geometric Processing, Engineering, Segmentation, Geometric Processing of Remote Sensing Imagery, Artificial Intelligence, Segmentation-based object categorization, Applied optics. Photonics, Image segmentation, Geography, T, FOS: Environmental engineering, Engineering (General). Civil engineering (General), Computer science, Artificial Intelligence and Expert Systems, TA1501-1820, Physical Sciences, Environmental Science, Computer Science, Mapping Forests with Lidar Remote Sensing, Computer vision, Object (grammar), TA1-2040
Cartography, Technology, Artificial intelligence, Scale-space segmentation, Environmental Engineering, Scale (ratio), Ocean Engineering, Pattern recognition (psychology), Geometric Processing, Engineering, Segmentation, Geometric Processing of Remote Sensing Imagery, Artificial Intelligence, Segmentation-based object categorization, Applied optics. Photonics, Image segmentation, Geography, T, FOS: Environmental engineering, Engineering (General). Civil engineering (General), Computer science, Artificial Intelligence and Expert Systems, TA1501-1820, Physical Sciences, Environmental Science, Computer Science, Mapping Forests with Lidar Remote Sensing, Computer vision, Object (grammar), TA1-2040
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