一种自构建的锁眼检测与定位CNN分类器

Junjie Ye, Bingtuan Gao, Hao Chen, Weilun Xu, Linlin Zhong, Chuande Liu
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引用次数: 0

摘要

随着人们对机器人具有开锁能力需求的发展,本文提出了一种锁孔实时检测算法,该算法将基于圆边缘特征的快速圆检测与基于自构建CNN的锁孔分类器相结合。该算法需要三个步骤:CNN构建、圆检测和局部圆图像的锁孔分类。首先,采集锁眼图像作为正样本,采集非锁眼图像和随机图像作为负样本。然后,构建一个CNN分类器来解决分类问题,并基于之前收集的样本对其进行训练。因此,检测实时采集的图像是否有圆以及圆在哪里。此外,提取的图像可能有圆形区域,使用之前训练过的CNN钥匙孔分类器来判断它们是否为钥匙孔图像。实验结果表明,在相同的训练和测试样本下,自构建CNN分类器的准确率(> 98%)比使用AlexNet迁移学习网络的CNN分类器(> 99%)低约1%,但其使用时间比AlexNet少约95%,网络大小比AlexNet少约99.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Self-Constructed CNN Classifier for Keyhole Detection and Location
With the development of the demand for robots to have the ability of opening and unlocking, a real-time detection algorithm for keyhole is proposed in this paper, which combines a fast circle detection based on circle edge feature and a keyhole classifier using self-constructed CNN. The algorithm needs three steps: CNN construction, circle detection and keyhole classification of local circle image. Firstly, collecting keyhole images as positive samples, collecting non-keyhole images and random images as negative samples. Then, constructing a CNN classifier to solve the classification problems and training it based on the samples collected before. Consequently, detecting the real-time collected image whether it has circles and where they are. Furthermore, extract images might have circle area and using the CNN keyhole classifier trained before to determine whether each of them is a keyhole image or not. The experimental results show that using the same training and testing samples, the accuracy of self-constructed CNN classifier(>98 %) is about 1 % lower than that the CNN classifier using AlexNet migration learning network (>99 %), but its time use is about 95% less than the AlexNet and its net size is about 99.5% less than the AlexNet.
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