Image-based Parking Place Identification for Regulating Shared Bicycle Parking

Shudong Xie, Yiqun Li, Qianli Xu, Fen Fang, Liyuan Li
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引用次数: 2

Abstract

We propose a novel method and system to prevent indiscriminate parking of dockless shared bicycles using location-based geo-fencing and image-based parking place identification. The geo-fencing is used to define the approximate regions for different types of bicycle parking regulations. The parking place identification uses a method based on deep Convolutional Neural Network (DCNN) to automatically identify designated bicycle parking places from photos captured by the cyclist using a mobile phone. Combining these two modalities, the parking of shared bicycles can be restricted in designated zones in various environments. Experiments are conducted using photos taken from the designated parking places with different parking indications at various locations. We evaluate the performance of the image-based parking place identification and use heatmaps to analyze potential features that are exploit by the DCNN models. The method achieves high performance on the testing dataset; and the features used for parking place identification are largely consistent with human perceptions.
基于图像的共享单车停放场所识别
本文提出了一种利用基于位置的地理围栏和基于图像的停车位识别来防止无桩共享单车乱停的新方法和系统。利用地理围栏来界定不同类型自行车停放规则的近似区域。停车位置识别采用基于深度卷积神经网络(DCNN)的方法,从骑自行车者用手机拍摄的照片中自动识别指定的自行车停车位。结合这两种方式,可以在各种环境下将共享单车限定在指定区域内停放。实验采用在指定的停车地点拍摄的照片,在不同地点有不同的停车标志。我们评估了基于图像的停车位识别的性能,并使用热图分析了DCNN模型利用的潜在特征。该方法在测试数据集上实现了高性能;用于停车位识别的特征与人类的感知基本一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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