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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Perceptually-guided deep neural networks for ego-action prediction: Object grasping
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Perceptually-guided deep neural networks for ego-action prediction: Object grasping

机译:感知导向的自我动作预测的深度神经网络:抓住物体

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We tackle the problem of predicting a grasping action in ego-centric video for the assistance to upper limb amputees. Our work is based on paradigms of neuroscience that state that human gaze expresses intention and anticipates actions. In our scenario, human gaze fixations are recorded by a glass-worn eye-tracker and then used to predict the grasping actions. We have studied two aspects of the problem: which object from a given taxonomy will be grasped, and when is the moment to trigger the grasping action. To recognize objects, we using gaze to guide Convolutional Neural Networks (CNN) to focus on an object-to-grasp area. However, the acquired sequence of fixations is noisy due to saccades toward distractors and visual fatigue, and gaze is not always reliably directed toward the object-of-interest. To deal with this challenge, we use video-level annotations indicating the object to be grasped and a weak loss in Deep CNNs. To detect a moment when a person will take an object we take advantage of the predictive power of Long-Short Term Memory networks to analyze gaze and visual dynamics. Results show that our method achieves better performance than other approaches on a real-life dataset. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们解决了在以自我为中心的视频中预测抓握行动的问题,以帮助上肢肢体。我们的工作是基于神经科学的范式,即人类凝视表达意图并预测行动的典范。在我们的场景中,人的注视固定器由玻璃磨损的眼跟踪器记录,然后用于预测抓握动作。我们研究了这个问题的两个方面:将掌握来自给定分类物的哪些对象,以及何时触发抓握行动。要识别对象,我们使用Gaze指导卷积神经网络(CNN),专注于对象到掌握区域。然而,由于朝向分散的病剂和视觉疲劳的扫视,所获取的固定序列是嘈杂的,并且凝视并不总是可靠地指向兴趣的敌意。要处理这一挑战,我们使用指示要掌握的对象的视频级注释以及深度CNNS的弱损失。为了检测一个人拍摄一个物体,我们利用长短短期内存网络的预测力来分析凝视和视觉动态。结果表明,我们的方法比现实数据集上的其他方法实现了更好的性能。 (c)2018年elestvier有限公司保留所有权利。

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