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Image retrieval using BIM and features from pretrained VGG network for indoor localization

机译:使用BIM和来自预训练的VGG网络的特征进行图像检索以进行室内定位

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摘要

Various devices that are used indoors require information regarding the user's position and orientation. This information enables the devices to offer the user customized and more relevant information. This study presents a new image-based indoor localization method using building information modeling (BIM) and convolutional neural networks (CNNs). This method constructs a dataset with rendered BIM images and searches the dataset for images most similar to indoor photographs, thereby estimating the indoor position and orientation of the photograph. A pretrained CNN (the VGG network) is used for image feature extraction for the similarity evaluation of two different types of images (BIM rendered and real images). Experiments were performed in real buildings to verify the method, and the matching accuracy is 91.61% for a total of 143 images. The results also confirm that pooling layer 4 in the VGG network is best suited for feature selection.
机译:室内使用的各种设备都需要有关用户位置和方向的信息。该信息使设备能够向用户提供定制的和更多相关的信息。这项研究提出了一种使用建筑物信息模型(BIM)和卷积神经网络(CNN)的基于图像的室内定位新方法。此方法使用渲染的BIM图像构造数据集,然后在数据集中搜索与室内照片最相似的图像,从而估算照片的室内位置和方向。预训练的CNN(VGG网络)用于图像特征提取,以评估两种不同类型的图像(BIM渲染的图像和真实的图像)的相似性。在真实建筑物中进行了实验以验证该方法,并且对于总共143张图像,匹配精度为91.61%。结果还证实,VGG网络中的池化第4层最适合特征选择。

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