Modern agricultural applications require knowledge about the position and size of fruits on plants. However, occlusions from leaves typically make obtaining this information difficult. We present a novel viewpoint planning approach that builds up an octree of plants with labeled regions of interest (ROIs), i.e., fruits. Our method uses this octree to sample viewpoint candidates that increase the information around the fruit regions and evaluates them using a heuristic utility function that takes into account the expected information gain. Our system automatically switches between ROI targeted sampling and exploration sampling, which considers general frontier voxels, depending on the estimated utility. When the plants have been sufficiently covered with the RGB-D sensor, our system clusters the ROI voxels and estimates the position and size of the detected fruits. We evaluated our approach in simulated scenarios and compared the resulting fruit estimations with the ground truth. The results demonstrate that our combined approach outperforms a sampling method that does not explicitly consider the ROIs to generate viewpoints in terms of the number of discovered ROI cells. Furthermore, we show the real-world applicability by testing our framework on a robotic arm equipped with an RGB-D camera installed on an automated pipe-rail trolley in a capsicum glasshouse.
翻译:现代农业应用要求了解植物果实的位置和大小。然而,从叶叶中分离出需要了解植物果实的位置和大小,通常难以获得这一信息。 我们提出了一个新观点规划方法,在植物中建立起一个有标签利益区域(如水果)的植物树,即水果。我们的方法是利用这棵树对候选人进行抽样,以增加水果区周围的信息,并使用一种考虑到预期信息收益的超光速效用功能来评估它们。我们的系统在ROI目标取样和勘探取样之间自动交换,根据估计的效用考虑一般前沿氧化物。当植物被RGB-D传感器充分覆盖时,我们的系统将ROI voxels聚合起来,并估计所探测到的水果的位置和大小。我们评估了我们在模拟情景中的做法,并将由此产生的水果估计与地面真相进行比较。结果表明,我们的综合方法优于一种抽样方法,没有明确地考虑ROI在所发现的ROI细胞数量方面产生观点。此外,我们展示了现实世界的可适用性,方法是在一台装有RGBD-CROVA摄像机的机器人架上测试我们的框架。