论文标题
从树皮外面的树木结预测的研究
A Study on Trees's Knots Prediction from their Bark Outer-Shape
论文作者
论文摘要
在该行业中,木木的价值在很大程度上取决于它们的内部结构,更具体地说是开结内的分布。截至目前,CT扫描仪是获取树木内部结构准确图像的普遍工具。但是,CT扫描仪昂贵且缓慢,这使得它们在大多数工业应用中的使用不切实际。知道结中结的位置可以通过减少浪费并提高木材木材副产品的质量来提高整个树木行业的效率。在本文中,我们评估了不同的基于深度学习的架构,以预测树的外部结内部分布,这是从未做过的。将研究基于卷积神经网络(CNN)的三种类型的技术。 在真实和合成的CT扫描树上都测试了体系结构。通过这些实验,我们证明了CNN可用于根据树木外表面预测内结的分布。目的是证明这些廉价且快速的方法可用于替代CT扫描仪。 此外,我们研究了几个现成的对象检测器的性能,以检测CT扫描图像中的结。该方法用于自主标记我们真正的CT扫描树的一部分,以减轻手动分割整个图像的需求。
In the industry, the value of wood-logs strongly depends on their internal structure and more specifically on the knots' distribution inside the trees. As of today, CT-scanners are the prevalent tool to acquire accurate images of the trees internal structure. However, CT-scanners are expensive, and slow, making their use impractical for most industrial applications. Knowing where the knots are within a tree could improve the efficiency of the overall tree industry by reducing waste and improving the quality of wood-logs by-products. In this paper we evaluate different deep-learning based architectures to predict the internal knots distribution of a tree from its outer-shape, something that has never been done before. Three types of techniques based on Convolutional Neural Networks (CNN) will be studied. The architectures are tested on both real and synthetic CT-scanned trees. With these experiments, we demonstrate that CNNs can be used to predict internal knots distribution based on the external surface of the trees. The goal being to show that these inexpensive and fast methods could be used to replace the CT-scanners. Additionally, we look into the performance of several off-the-shelf object-detectors to detect knots inside CT-scanned images. This method is used to autonomously label part of our real CT-scanned trees alleviating the need to manually segment the whole of the images.