Where Am I? Comparing CNN and LSTM for Location Classification in Egocentric Videos

G. Kapidis, R. Poppe, E. V. Dam, R. Veltkamp, L. Noldus
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引用次数: 7

Abstract

Egocentric vision is a technology that exists in a variety of fields such as life-logging, sports recording and robot navigation. Plenty of research work focuses on location detection and activity recognition, with applications in the area of Ambient Assisted Living. The basis of this work is the idea that locations can be characterized by the presence of specific objects. Our objective is the recognition of locations in egocentric videos that mainly consist of indoor house scenes. We perform an extensive comparison between Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) based classification methods that aim at finding the in-house location by classifying the detected objects which are extracted with a state-of-the-art object detector. We show that location classification is affected by the quality of the detected objects, i.e., the false detections among the correct ones in a series of frames, but this effect can be greatly limited by taking into account the temporal structure of the information by using LSTM. Finally, we argue about the potential for useful real-world applications.
我在哪里?比较CNN和LSTM在自中心视频中的位置分类
以自我为中心的视觉是一种存在于生活记录、运动记录和机器人导航等各个领域的技术。大量的研究工作集中在位置检测和活动识别,并在环境辅助生活领域的应用。这项工作的基础是位置可以通过特定物体的存在来表征的想法。我们的目标是在以自我为中心的视频中识别位置,这些视频主要由室内房屋场景组成。我们对卷积神经网络(CNN)和基于长短期记忆(LSTM)的分类方法进行了广泛的比较,这些方法旨在通过对使用最先进的对象检测器提取的检测对象进行分类来找到内部位置。我们表明,位置分类受到检测对象质量的影响,即一系列帧中正确对象中的错误检测,但通过使用LSTM考虑信息的时间结构,可以极大地限制这种影响。最后,我们讨论了实际应用的潜力。
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