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A neural network based retrainable framework for robust object recognition with application to mobile robotics

机译:基于神经网络的可训练框架,用于鲁棒的对象识别,并应用于移动机器人

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摘要

In this paper, we address object recognition for a mobile robot which is deployed in a multistory building. To move to another floor, a mobile robot should recognize various objects related to an elevator, e.g., elevator control, call buttons, and LED displays. To this end, we propose a neural network based retrainable framework for object recognition, which consists of four components-preprocessing, binary classification, object identification, and outlier rejection. The binary classifier, a key component of our system, is a neural network that can be retrained, the motivation of which is to adapt to varying environments, especially with illuminations. Without incurring any extra process to prepare new training samples for retraining, they are freely obtained as a result of the outlier rejection component, being extracted on-line. To realize a practical system, we adopt a parallel architecture integrating both recognition and retraining processes for seamless object recognition, and furthermore detect and cope with the deterioration of a retrained neural network to ensure high reliability. We demonstrate the positive effect of retraining on the object recognition performance by conducting experiments over hundreds of images obtained in daytime and nighttime.
机译:在本文中,我们针对部署在多层建筑物中的移动机器人解决对象识别问题。为了移动到另一个楼层,移动机器人应该识别与电梯相关的各种对象,例如,电梯控制,呼叫按钮和LED显示屏。为此,我们提出了一种基于神经网络的可再训练对象识别框架,该框架由四个部分组成:预处理,二进制分类,对象识别和离群值剔除。二进制分类器是我们系统的关键组件,它是一个可以重新训练的神经网络,其动机是适应变化的环境,尤其是在照明条件下。无需花费任何额外的时间来准备新的训练样本以进行再训练,由于异常排除成分的存在,可以自由地在线获取这些样本。为了实现一个实用的系统,我们采用了一种将识别和再训练过程集成在一起的并行体系结构,以实现无缝的物体识别,并且进一步检测和应对再训练的神经网络的恶化,以确保高可靠性。我们通过对白天和晚上获得的数百幅图像进行实验,证明了再训练对物体识别性能的积极影响。

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