Task-oriented Function Detection Based on Operational Tasks

Yuchi Ishikawa, Haruya Ishikawa, S. Akizuki, Masaki Yamazaki, Y. Taniguchi, Y. Aoki
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Abstract

We propose novel representations for functions of an object, namely Task-oriented Function, which is improved upon the idea of Afforadance in the field of Robotics Vision. We also propose a convolutional neural network to detect task-oriented functions. This network takes as input an operational task as well as an RGB image and assign each pixel an appropriate label for every task. Task-oriented funciton makes it possible to descibe various ways to use an object because the outputs from the network differ depending on operational tasks. We introduce a new dataset for task-oriented function detection, which contains about 1200 RGB images and 6000 pixel-level annotations assuming five tasks. Our proposed method reached 0.80 mean IOU in our dataset.
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基于操作任务的面向任务的功能检测
我们提出了一种新的对象功能表示,即面向任务的函数,它是在机器人视觉领域的可预见性思想的基础上改进的。我们还提出了一种卷积神经网络来检测面向任务的函数。该网络将操作任务和RGB图像作为输入,并为每个任务分配每个像素适当的标签。面向任务的功能使得描述使用对象的各种方式成为可能,因为网络的输出根据操作任务而不同。我们引入了一个新的面向任务的函数检测数据集,该数据集包含大约1200张RGB图像和6000个像素级注释,假设有5个任务。我们提出的方法在我们的数据集中达到了0.80的平均IOU。
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