Gaze-based Object Detection in the Wild

Daniel Weber, Wolfgang Fuhl, A. Zell, Enkelejda Kasneci
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引用次数: 2

Abstract

I human-robot collaboration, one challenging task is to teach a robot new yet unknown objects enabling it to interact with them. Thereby, gaze can contain valuable information. We investigate if it is possible to detect objects (object or no object) merely from gaze data and determine their bounding box parameters. For this purpose, we explore different sizes of temporal windows, which serve as a basis for the computation of heatmaps, i.e., the spatial distribution of the gaze data. Additionally, we analyze different grid sizes of these heatmaps, and demonstrate the functionality in a proof of concept using different machine learning techniques. Our method is characterized by its speed and resource efficiency compared to conventional object detectors. In order to generate the required data, we conducted a study with five subjects who could move freely and thus, turn towards arbitrary objects. This way, we chose a scenario for our data collection that is as realistic as possible. Since the subjects move while facing objects, the heatmaps also contain gaze data trajectories, complicating the detection and parameter regression. We make our data set publicly available to the research community for download.
野外基于注视的物体检测
在人机协作中,一项具有挑战性的任务是教会机器人新的未知对象,使其能够与之交互。因此,凝视可以包含有价值的信息。我们研究是否有可能仅仅从凝视数据中检测物体(物体或无物体)并确定它们的边界框参数。为此,我们探索了不同大小的时间窗口,作为计算热图的基础,即凝视数据的空间分布。此外,我们分析了这些热图的不同网格大小,并使用不同的机器学习技术在概念验证中演示了功能。与传统的目标检测器相比,我们的方法具有速度快、资源效率高的特点。为了生成所需的数据,我们对五名可以自由移动的受试者进行了研究,因此,他们可以转向任意物体。通过这种方式,我们为数据收集选择了一个尽可能真实的场景。由于受试者在面对物体时移动,热图还包含凝视数据轨迹,使检测和参数回归变得复杂。我们将我们的数据集公开提供给研究社区下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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