A Door Detection System for Convenience Stores in Taiwan

Tipajin Thaipisutikul, Kanatip Prompol, Chih-Yang Lin, Wen-Thong Chang, K. Muchtar
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Abstract

A door is a very substantial element since it enables a person to enter a target place. Though detecting a doorway is an easy task for a regular person, it is challenging for robots or visually impaired people. Although most existing deep learning object detection models have shown promising results, they have a limitation in distinguishing between glass doors and glass walls in a convenience store. To address this issue, we propose an effective door detection system for convenience stores in Taiwan. Our system consists of two main models: 1) the object detection and 2) the door bounding box models. The former model uses the re-train YOLOv4 as the main building box. The latter model uses a fully connected neural network as the main building box. In particular, we utilize the surrounding objects in the scene to improve the performance and robustness of convenient glass door entrance detection. The experimental results demonstrate that our proposed method not only achieves the quantitative accuracy result up to 93% but also provides decent qualitative results.
台湾便利商店门侦测系统
门是一个非常重要的元素,因为它使人能够进入目标地点。对于普通人来说,探测门是一件很容易的事情,但对于机器人或视障人士来说,这是一项挑战。尽管大多数现有的深度学习对象检测模型都显示出了很好的结果,但它们在区分便利店的玻璃门和玻璃墙方面存在局限性。为了解决这个问题,我们提出一套有效的台湾便利店门侦测系统。我们的系统由两个主要模型组成:1)目标检测模型和2)门边界盒模型。前一个模型使用重新训练的YOLOv4作为主要的建筑箱。后一种模型使用全连接神经网络作为主要的构建盒。特别地,我们利用场景中的周围物体来提高便捷玻璃门入口检测的性能和鲁棒性。实验结果表明,本文提出的方法不仅可以达到93%的定量准确度,而且可以提供良好的定性结果。
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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