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Optimal Selection of the Workpiece Recognition Parameters by Minimizing the Total Error Cost

机译:通过最小化总误差成本,最佳选择工件识别参数

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Workpiece recognition is crucial in many flexible assembly cells, in automatic unmanned workstations and in robotic cells for human-robot collaborative scenarios. It allows for variability in the workpiece location & pose, and timing of the various operations. Automatic object recognition systems often rely on supervised machine learning methods, their parameters have to be chosen before training and cannot be changed later in runtime. In many machine learning applications the parameters are chosen in order to optimize the measures of relevance: accuracy, precision and recall. Usually these conflicting performance metrics are optimized independently from production costs. The innovation of present study is the introduction of a new metric to be optimized, a dimensionless total cost. It is a linear combination of the false positive and the false negative rates which are directly proportional to the real-life costs of errors. The presented case study, an object recognition system for reflective workpieces, is applied the proposed parameter selection to achieve optimal results with minimum production costs.
机译:工件识别在许多柔性组装单元中是至关重要的,在自动无人工作站和用于人机协作情景的机器人单元中。它允许工件位置和姿势的可变性,以及各种操作的时间。自动对象识别系统通常依赖于监督机器学习方法,必须在训练前选择它们的参数,并且无法在运行时稍后更改。在许多机器学习应用中,选择参数,以优化相关性:准确性,精度和召回。通常,这些冲突的性能指标是独立于生产成本优化的。目前研究的创新是引入新的公制优化,无量纲总成本。它是假阳性和假负率的线性组合,其与错误的真实成本成正比。呈现的案例研究,用于反射工件的物体识别系统,应用了所提出的参数选择以实现最低生产成本的最佳结果。

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