Intelligent Mobile Robot Controller Design for Hotel Room Service with Deep Learning Arm-Based Elevator Manipulator

Po-Yu Yang, Tzu-Hsuan Chang, Y. Chang, Bing-Fei Wu
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引用次数: 13

Abstract

Although mobile robots have achieved great success in indoor navigation, they are still facing problems like operating through multi-floor hotel buildings. In this paper, a low-cost and lightweight mobile robot is proposed for hotel room service. For delivering any item that customers need, the robot should be able to manipulate elevators in an unmanned hotels. So, it is separated into three parts: elevator button detection, coordinate transform and fuzzy logical control to manipulate the robotic arm. To recognize and detect a variety of elevator panels and buttons, a large number of the images are collected and labeled manually by ourselves. With state-of-the-art deep learning framework, our model has achieved 95.172 mean average precision (mAP) even in elevators that are not included in training data. After properly detecting the elevator buttons, the 3D position corresponding to each elevator button is transformed by the fusion of two sensors which are a mono-camera and a Lidar. This paper presents a coordinates transform neural network to estimate real world position, and our method achieves in an average distance error of 1.356 mm. The fuzzy logical controllers are designed for manipulating the robotic arm fast and smoothly.
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基于深度学习臂式电梯机械手的酒店客房服务智能移动机器人控制器设计
尽管移动机器人在室内导航方面取得了巨大的成功,但它们仍然面临着通过多层酒店建筑等问题。本文提出了一种低成本、轻量化的酒店客房服务移动机器人。为了运送顾客需要的任何物品,机器人应该能够操纵无人酒店的电梯。因此,将其分为电梯按钮检测、坐标变换和模糊逻辑控制三个部分来实现对机械臂的操纵。为了识别和检测各种电梯面板和按钮,大量的图像是我们自己手工采集和标记的。使用最先进的深度学习框架,即使在未包含在训练数据中的电梯中,我们的模型也达到了95.172的平均精度(mAP)。在正确检测到电梯按钮后,通过单摄像头和激光雷达两个传感器的融合变换每个电梯按钮对应的三维位置。本文提出了一种坐标变换神经网络来估计真实世界的位置,该方法的平均距离误差为1.356 mm。为了快速、平稳地控制机械臂,设计了模糊逻辑控制器。
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