A Novel Convolutional Neural Network Based Localization System for Monocular Images

Chen Sun, Chunping Li, Yan Zhu
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引用次数: 5

Abstract

The authors present a robust and extendable localization system for monocular images. To have both robustness toward noise factors and extendibility to unfamiliar scenes simultaneously, our system combines traditional content-based image retrieval structure with CNN feature extraction model to localize monocular images. The core model of the system is a deep CNN feature extraction model. The feature extraction model can map an image to a d-dimension space where image pairs in the real word have smaller Euclidean distances. The feature extraction model is achieved using a deep Convnet modified from GoogLeNet. A special way to train the feature extraction model is proposed in the article using localization results from Cambridge Landmarks dataset. Through experiments, it is shown that the system is robust to noise factors supported by high level CNN features. Furthermore, the authors show that the system has a powerful extendibility to other unfamiliar scenes supported by a feature extract model's generic property and structure.
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一种基于卷积神经网络的单眼图像定位系统
提出了一种鲁棒的、可扩展的单眼图像定位系统。为了同时具有对噪声因素的鲁棒性和对陌生场景的可扩展性,我们的系统将传统的基于内容的图像检索结构与CNN特征提取模型相结合来定位单眼图像。该系统的核心模型是一个深度CNN特征提取模型。特征提取模型可以将图像映射到实际世界中图像对具有较小欧氏距离的d维空间。特征提取模型采用GoogLeNet改进的深度卷积神经网络实现。本文提出了一种利用剑桥地标数据集的定位结果训练特征提取模型的特殊方法。实验结果表明,该系统对高阶CNN特征支持的噪声因素具有较强的鲁棒性。此外,在特征提取模型的通用属性和结构的支持下,该系统对其他不熟悉的场景具有强大的可扩展性。
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