Straightforward Recognition of Daily Objects in Smart Environments from Wearable Vision Sensor

J. M. Quero, F. Cruciani, Lorenzo Seidenari, M. Espinilla, C. Nugent
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引用次数: 2

Abstract

In this work, we propose a method to create and synthesize a new set of virtual images of daily objects within a smart environment partially automating the labeling process. Proposed methods enable the generation of a large dataset from a set of few images using an ad hoc data augmentation, which increases the original dataset size, generating new items through partial modification of available images. The proposed method for data augmentation is accomplished through the following steps: (i) object tracking is proposed to identify and label static objects; and (ii) background subtraction is used to select the masked foreground object of moving objects, which are virtually projected with geometry transformation over room images used as background. Furthermore, a case study is carried out, where an inhabitant wears a wearable vision sensor in a daily scene. Eight objects are learned using the proposed methodology. Finally, obtained results and successful recognition rates are discussed.
基于可穿戴视觉传感器的智能环境中日常物体的直接识别
在这项工作中,我们提出了一种在智能环境中创建和合成一组新的日常物品虚拟图像的方法,该方法可以部分自动化标记过程。所提出的方法能够使用临时数据增强从一组少数图像生成大型数据集,这增加了原始数据集的大小,通过部分修改可用图像生成新项目。提出的数据增强方法通过以下步骤实现:(i)提出对象跟踪以识别和标记静态对象;(2)采用背景减法,对运动物体进行遮挡后的前景物体,通过几何变换将其虚拟投影到作为背景的房间图像上。此外,还进行了一个案例研究,其中居民在日常场景中佩戴可穿戴视觉传感器。使用提出的方法学习了八个对象。最后对所得结果和成功率进行了讨论。
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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