Food packing industries typically use seasonal ingredients with immense variety that factory workers manually pack. For small pieces of food picked by volume or weight that tend to get entangled, stick or clump together, it is difficult to predict how intertwined they are from a visual examination, making it a challenge to grasp the requisite target mass accurately. Workers rely on a combination of weighing scales and a sequence of complex maneuvers to separate out the food and reach the target mass. This makes automation of the process a non-trivial affair. In this study, we propose methods that combines 1) pre-grasping to reduce the degree of the entanglement, 2) post-grasping to adjust the grasped mass using a novel gripper mechanism to carefully discard excess food when the grasped amount is larger than the target mass, and 3) selecting the grasping point to grasp an amount likely to be reasonably higher than target grasping mass with confidence. We evaluate the methods on a variety of foods that entangle, stick and clump, each of which has a different size, shape, and material properties such as volumetric mass density. We show significant improvement in grasp accuracy of user-specified target masses using our proposed methods.
翻译:食品包装行业通常使用季节性成分,工厂工人手工包装的食品种类繁多。对于按体积或重量提取的、往往被缠住、粘贴或粘结在一起的小食品,很难预测它们与视觉检查的交织程度,因此很难准确掌握必要的目标质量。工人依靠权衡尺度和一系列复杂的操作组合,将食物分离出来并达到目标质量。这使得工艺自动化成为非三重事件。在本研究中,我们建议了方法,这些方法组合了:(1) 预先加权,以减少缠绕的程度;(2) 后加权,利用新颖的握柄机制,调整所捕到的质量,以便在所捕量大于目标质量时仔细丢弃多余的粮食;(3) 选择捕捉点,以把握可能合理高于目标获得质量的量,充满信心。我们用拟议的方法评估各种缠绕、粘结和粘结食品的方法,每种食物的大小、形状和物质特性都不同,如体积质量密度等。我们用拟议的方法大大改进了对用户质量的准确性。