Robotic Assistant for Object Recognition Using Convolutional Neural Network

Sunday Oluyele, Ibrahim Adeyanju, Adedayo A. Sobowale
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Abstract

Visually impaired persons encounter certain challenges, which include access to information, environmental navigation, and obstacle detection. Navigating daily life becomes a big task with challenges relating to the search for misplaced personal items and being aware of objects in their environment to avoid collision. This necessitates the need for automated solutions to facilitate object recognition. While traditional methods like guide dogs, white canes, and Braille have offered valuable solutions, recent technological solutions, including smartphone-based recognition systems and portable cameras, have encountered limitations such as constraints relating to cultural-specific, device-specific, and lack of system autonomy. This study addressed and provided solutions to the limitations offered by recent solutions by introducing a Convolutional Neural Network (CNN) object recognition system integrated into a mobile robot designed to function as a robotic assistant for visually impaired persons. The robotic assistant is capable of moving around in a confined environment. It incorporates a Raspberry Pi with a camera programmed to recognize three objects: mobile phones, mice, and chairs. A Convolutional Neural Network model was trained for object recognition, with 30% of the images used for testing. The training was conducted using the Yolov3 model in Google Colab. Qualitative evaluation of the recognition system yielded a precision of 79%, recall of 96%, and accuracy of 80% for the Robotic Assistant. It also includes a Graphical User Interface where users can easily control the movement and speed of the robotic assistant. The developed robotic assistant significantly enhances autonomy and object recognition, promising substantial benefits in the daily navigation of visually impaired individuals.
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利用卷积神经网络识别物体的机器人助手
视障人士会遇到一些挑战,包括获取信息、环境导航和障碍物探测。日常生活导航是一项艰巨的任务,需要寻找放错位置的个人物品,还要注意环境中的物体以避免碰撞。因此,有必要采用自动解决方案来促进物体识别。虽然导盲犬、白手杖和盲文等传统方法提供了有价值的解决方案,但最近的技术解决方案,包括基于智能手机的识别系统和便携式摄像头,都遇到了一些限制,如与特定文化、特定设备和缺乏系统自主性有关的限制。本研究针对近期解决方案的局限性提出了解决方案,将卷积神经网络(CNN)物体识别系统集成到移动机器人中,作为视障人士的机器人助手。该机器人助手能够在狭窄的环境中移动。它集成了一个带摄像头的 Raspberry Pi,可识别三种物体:手机、鼠标和椅子。为识别物体训练了一个卷积神经网络模型,其中 30% 的图像用于测试。训练使用谷歌 Colab 中的 Yolov3 模型进行。对识别系统的定性评估结果显示,机器人助手的精确度为 79%,召回率为 96%,准确率为 80%。该系统还包括一个图形用户界面,用户可以轻松控制机器人助手的动作和速度。所开发的机器人助手大大提高了自主性和物体识别能力,有望为视力受损者的日常导航带来巨大好处。
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