Comparative Study of Object Shape Recognition using Ultrasonic Sensor Arrays with Artificial Neural Network

Sancoy Barua, Anoy Saha, Ainul Anam Shahjamal Khan, R. Chowdhury
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Abstract

In this paper, attempts are made to detect some basic shape of objects using ultrasonic sensor arrays with Artificial Neural Network (ANN). For this purpose two types of ultrasonic sensor array are designed on prototype basis using HCSR04 ultrasonic sensors. The time of flight (TOF) variations of the sensors are considered as the features for the recognition unit. The objects are kept at a fixed distance from the sensor array to measure the TOF. The TOF of different sensors varies with the different object's shape. The two tools of ANN named ‘Function Fitting' and ‘Pattern Recognition' are used as shape recognition unit. These tools are trained with particular objects data. During the testing phase, the previously trained neural networks are recalled to detect the desired shape of the objects. Based on the detection results of two ANN tools a comparative study is redacted between the hexagonal sensor array and 3x3 sensor array. The study observed that, the 3x3 sensor array under ‘Function Fitting' tool gives the better result of shape detection. Moreover, this system avoids the complexity of signal conditioning algorithm and circuitry. It can be incorporated within a smart device to aid the blind people if this system is fine-tuned properly.
超声传感器阵列与人工神经网络物体形状识别的比较研究
本文尝试利用人工神经网络(ANN)对超声传感器阵列的一些基本形状进行检测。为此,利用HCSR04型超声传感器,在样机的基础上设计了两种类型的超声传感器阵列。将传感器的飞行时间(TOF)变化作为识别单元的特征。物体与传感器阵列保持固定距离以测量TOF。不同传感器的TOF随物体形状的不同而不同。采用人工神经网络的“函数拟合”和“模式识别”两种工具作为形状识别单元。这些工具是用特定对象数据训练的。在测试阶段,调用之前训练过的神经网络来检测目标的所需形状。基于两种人工神经网络工具的检测结果,对六边形传感器阵列和3x3传感器阵列进行了比较研究。研究发现,“函数拟合”工具下的3x3传感器阵列可以获得更好的形状检测结果。此外,该系统避免了信号调理算法和电路的复杂性。如果对这个系统进行适当的微调,它可以被整合到一个智能设备中,以帮助盲人。
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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