Owing to human labor shortages, the automation of labor-intensive manual waste-sorting is needed. The goal of automating the waste-sorting is to replace the human role of robust detection and agile manipulation of the waste items by robots. To achieve this, we propose three methods. First, we propose a combined manipulation method using graspless push-and-drop and pick-and-release manipulation. Second, we propose a robotic system that can automatically collect object images to quickly train a deep neural network model. Third, we propose the method to mitigate the differences in the appearance of target objects from two scenes: one for the dataset collection and the other for waste sorting in a recycling factory. If differences exist, the performance of a trained waste detector could be decreased. We address differences in illumination and background by applying object scaling, histogram matching with histogram equalization, and background synthesis to the source target-object images. Via experiments in an indoor experimental workplace for waste-sorting, we confirmed the proposed methods enable quickly collecting the training image sets for three classes of waste items, i.e., aluminum can, glass bottle, and plastic bottle and detecting them with higher performance than the methods that do not consider the differences. We also confirmed that the proposed method enables the robot quickly manipulate them.
翻译:由于人力短缺,需要将劳动密集型手工废物分类自动化。废物分类自动化的目的是取代由机器人对废物进行强力检测和灵活处理的人类作用。为了实现这一点,我们提出三种方法。首先,我们提出一种混合操纵方法,使用无捉摸的推、投、取、放等手操作。第二,我们提议一个机器人系统,可以自动收集物体图像,以快速培训深神经网络模型。第三,我们提出减少两个场景目标物体外观差异的方法:一个用于数据收集,另一个用于回收工厂的废物分类。如果存在差异,经过训练的废物探测器的性能可以降低。我们通过应用天体缩放、直方图与直方图均匀匹配,以及源目标定位图像的背景合成,解决了照明和背景差异。在室内实验工作场所进行废物分类实验,我们确认拟议方法能够迅速收集三类废物的训练图集,即数据收集,另一个用于在回收厂进行废物分类。如果存在差异,那么经过训练的废物探测器的性能会降低。我们通过应用物体缩放、玻璃、玻璃和塑料的操作方法,我们也可以快速地检测这些塑料的容器和塑料。