Intelligent Billing system using Object Detection

Neeraj Chidella, N. K. Reddy, Nicole Reddy, Maddi Mohan, Joydeep Sengupta
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Abstract

With the rapidly increasing technology and development in machine learning, deep learning and artificial intelligence, improving the billing system is an effective means of reducing wastage of time. Nowadays, even though barcode scanners have become as fast as ever but for fruits and vegetables, it still needs to be entered manually into the computer which is very time taking and hectic process. Vegetable and fruit markets have become an integral part of our life hence in such places the environment must be made hassle free and more importantly, the billing should be less laborious and efficient without wasting time. In order to overcome the existing problems associated with the barcode and RFID tags, we proposed an automatic billing system that detects the fruits and vegetables and then displays the final Bill. The main objective of this project is to detect the fruits, display the fruits detected and then to bill these items. To achieve this, we have used two different algorithms, 1) Fine tuned Convolutional Neural Network that we built from base model. 2) To increase accuracy for real time object detection and for the bounding boxes to be displayed, we used state of the art YOLO based on pytorch as YOLO predicts the bounding boxes and detects the object faster than other detection algorithms and is more reliable.
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使用对象检测的智能计费系统
随着机器学习、深度学习、人工智能等技术的飞速发展,完善计费系统是减少时间浪费的有效手段。如今,尽管条形码扫描器的速度比以往任何时候都快,但对于水果和蔬菜,仍然需要手动输入到计算机中,这是一个非常耗时和繁忙的过程。蔬菜和水果市场已经成为我们生活中不可或缺的一部分,因此在这样的地方,环境必须是无麻烦的,更重要的是,账单应该不浪费时间,不那么费力和高效。为了克服条形码和RFID标签存在的问题,我们提出了一种自动计费系统,它可以检测水果和蔬菜,然后显示最终的账单。这个项目的主要目标是检测水果,显示检测到的水果,然后对这些项目进行计费。为了实现这一目标,我们使用了两种不同的算法:1)基于基础模型构建的微调卷积神经网络。2)为了提高实时目标检测和显示边界框的准确性,我们使用了基于pytorch的最先进的YOLO,因为YOLO预测边界框并比其他检测算法更快地检测目标,并且更可靠。
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