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Object Detection in Floor Plan Images

机译:平面图图像中的对象检测

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In this work we investigate the use of deep neural networks for object detection in floor plan images. Object detection is important for understanding floor plans and is a preliminary step for their conversion into other representations. In particular, we evaluate the use of object detection architectures, originally designed and trained to recognize objects in images, for recognizing furniture objects as well as doors and windows in floor plans. Even if the problem is somehow easier than the original one in the case of this research the datasets available are extremely small and therefore the training of deep architectures can be problematic. In addition to the use of object detection architectures for floor plan images, another contribution of this paper is the creation of two datasets that have been used for performing the experiments covering different types of floor plans with different peculiarities.
机译:在这项工作中,我们调查了深度神经网络在平面图图像中用于物体检测的用途。对象检测对于理解平面图很重要,并且是将其转换为其他表示形式的第一步。特别是,我们评估了对象检测架构的使用,该对象检测架构最初经过设计和培训以识别图像中的对象,以识别家具对象以及平面图中的门窗。即使在本研究中该问题比原始问题要容易一些,可用的数据集也非常小,因此对深层体系结构的训练可能会出现问题。除了将对象检测体系结构用于平面图图像之外,本文的另一个贡献是创建了两个数据集,这些数据集已用于执行涵盖具有不同特性的不同类型平面图的实验。

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