节点文献
基于卷积神经网络的横向转角预测方法
Method of lateral turning angle prediction based on CNN
【摘要】 由于智能小车探测周围环境的硬件设备的繁杂,将卷积神经网络与摄像头结合来探测周围环境越来越成为研究的热点。然而,单纯地使用卷积神经网络处理摄像头的数据来控制小车的转角,存在训练时间久、准确率不高的问题。针对上述问题,该文提出了将摄像头的数据经过无监督的二分K-means聚类方法之后,再将聚类结果作为卷积神经网络的输入,最终预测小车转角。实验结果证明,该网络结构可以有效地提高网络的训练速度,并提高网络的准确率。
【Abstract】 As the intelligent little vehicle’ s hardware equipments for detecting the surrounding environment are too complex,it has become a research hotspot to combine convolutional neural network with camera to detect the surrounding environment. However,if the convolutional neural network is applied alone to process the data of the camera for the turning angle control of the little vehicle, the training time would be long and the accuracy would be low. Based on the above problems,the camera data is processed by means of the unsupervised binary k-means clustering method,and then the clustering result is taken as the input of the convolutional neural network,so as to predict the little vehicle’ s turning angle. The Experiment results show that the network structure can effectively improve the training speed and accuracy of the network.
【Key words】 turning angle prediction; convolutional neural network; data processing; surrounding environment detection; network training; result analysis;
- 【文献出处】 现代电子技术 ,Modern Electronics Technique , 编辑部邮箱 ,2020年06期
- 【分类号】U463.6;TP391.41;TP183
- 【下载频次】138