从不同的视频演示程序生成

Anthony Manchin, J. Sherrah, Qi Wu, A. Hengel
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引用次数: 0

摘要

运用归纳推理从多种观察中提取一般规则的能力是智力的重要指标。作为人类,我们不仅利用这种能力来解读我们周围的世界,还利用这种能力来预测我们所经历的各种互动的结果。从历史上看,对多个观察结果进行泛化是一项机器难以掌握的任务,特别是在需要计算机视觉的情况下。在本文中,我们提出了一个可以通过同时进行摘要和翻译从视频演示中提取一般规则的模型。我们的方法与之前的工作不同,它将问题构建为一个多序列到序列的任务,其中总结由模型学习。这允许我们的模型利用边缘情况,否则将被传统的总结技术压制或丢弃。此外,我们表明,我们的方法可以处理有噪声的规格,而不需要额外的滤波方法。我们通过在Vizdoom环境中合成视频演示程序来评估我们的模型,获得了最先进的结果,与之前的作品相比,程序精度相对提高了11.75%
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Program Generation from Diverse Video Demonstrations
The ability to use inductive reasoning to extract general rules from multiple observations is a vital indicator of intelligence. As humans, we use this ability to not only interpret the world around us, but also to predict the outcomes of the various interactions we experience. Generalising over multiple observations is a task that has historically presented difficulties for machines to grasp, especially when requiring computer vision. In this paper, we propose a model that can extract general rules from video demonstrations by simultaneously performing summarisation and translation. Our approach differs from prior works by framing the problem as a multi-sequence-to-sequence task, wherein summarisation is learnt by the model. This allows our model to utilise edge cases that would otherwise be suppressed or discarded by traditional summarisation techniques. Additionally, we show that our approach can handle noisy specifications without the need for additional filtering methods. We evaluate our model by synthesising programs from video demonstrations in the Vizdoom environment achieving state-of-the-art results with a relative increase of 11.75% program accuracy on prior works
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