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Visual Task Progress Estimation with Appearance Invariant Embeddings for Robot Control and Planning

机译:具有外观不变嵌入的Visual Task进度估计,用于机器人控制和规划

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One of the challenges of full autonomy is to have robots capable of manipulating its current environment to achieve another environment configuration. This paper is a step towards this challenge, focusing on the visual understanding of the task. Our approach trains a deep neural network to represent images as measurable features that are useful to estimate the progress (or phase) of a task. The training uses numerous variations of images of identical tasks when taken under the same phase index. The goal is to make the network sensitive to differences in task progress but insensitive to the appearance of the images. To this end, our method builds upon Time-Contrastive Networks (TCNs) to train a network using only discrete snapshots taken at different stages of a task. A robot can then solve long-horizon tasks by using the trained network to identify the progress of the current task and by iteratively calling a motion planner until the task is solved. We quantify the granularity achieved by the network in two simulated environments. In the first, to detect the number of objects in a scene and in the second to measure the volume of particles in a cup. Our experiments leverage this granularity to make a mobile robot move a desired number of objects into a storage area and to control the amount of pouring in a cup.
机译:完全自主权的挑战之一是具有能够操纵其当前环境的机器人来实现其他环境配置。本文是迈向这一挑战的一步,重点是对任务的视觉理解。我们的方法列举了一个深度神经网络,以表示图像作为可测量的特征,可用于估计任务的进度(或阶段)。在相同的相位指数下拍摄时,培训使用相同任务的许多变化。目标是使网络对任务进度的差异敏感,但对图像的外观不敏感。为此,我们的方法在时间对比网络(TCN)上建立,仅使用在任务的不同阶段采取的离散快照培训网络。然后,机器人可以通过使用训练的网络来识别当前任务的进度,并且通过迭代地调用运动计划员,直到任务解决了长地平衡任务。我们在两个模拟环境中量化网络实现的粒度。首先,为了检测场景中的物体的数量,并在第二中测量杯子中的粒子的体积。我们的实验利用这种粒度使移动机器人将所需数量的物体移动到存储区域中,并控制杯中的浇注量。

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