基于嵌入式PD-FLC的有监督深度学习和机器人定位的高效分类过程

Emad A. Elsheikh
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摘要

最近,计算机视觉在工业应用的包装和分拣等机器人武器中有了相当大的发展。真正的挑战是如何在根据对象的特征进行识别、操作、选择、排序的4个方面,以人工智能(AI)为基础,改进现有的排序系统。因此,本文提出了一种基于深度学习(DL)的自动分拣系统,并使用嵌入式PD-FLC在机械臂上进行控制。该算法分为三个阶段;第一阶段介绍了使用卷积神经网络(CNN)算法的监督深度学习(SDL)概念构建水果识别和分类模型。该模型使用我们的图像数据集进行训练,该数据集考虑了12类水果,命名为(fruits -dataset)。第二阶段使用预训练的模型和网络摄像头,自动将检测到的物体实时识别并分类为12类水果。第三阶段使用嵌入式比例导数模糊逻辑控制器(PDFLC)控制三维机械臂的位置,将分类对象定位到期望的位置。我们提出的SDLCNN模型在不同的环境状态下(室外和室内),在不同的颜色模式和强度下进行了水果分类测试。将所提出的SDL-CNN算法与不同的最新算法进行了比较。相应的,实验结果表明所开发的设计具有有效性、准确性高、成本低等特点,能够对水果进行实时识别和分类。
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An Efficient Classification Process using Supervised Deep Learning and Robot Positioning based on Embedded PD-FLC
Recently, computer vision has grown considerably in roboticsarms such as packaging and sorting for Industrial applications. The real challenge is how to improve the present sorting system based on artificial intelligence (AI) in the four points to identify, manipulate, select, and sort objects depending on their features. Therefore, this paper proposes an automatic sorting system based on Deep Learning (DL) and control in a robotic arm using an embedded PD-FLC. The proposed algorithm is divided into three stages; The first stage introduces building a Model for the identification and classification of fruits using the concept of Supervised deep learning (SDL) using the convolution neural network (CNN) algorithm. The model is trained using our data set of images that consider 12 classes of fruits named (Fruits-dataset). The second stage uses the pre-trained model and a web camera to automatically identify and classify the detected objects into 12 categories of fruits in real-time. The third stage uses an embedded proportional derivative fuzzy logic controller (PDFLC) to control the position of a 3DOF robotic arm to locate the classified object in the desired location. Our proposed SDLCNN model is tested to classify the fruits under different environment states (outdoor and indoor) in different color modes and intensities. The proposed SDL-CNN algorithm is compared with different state-of-the-art methods. Correspondingly, the obtained results show the effectiveness, high accuracy, and low cost of the developed design with the capability of real-time identifying and classifying the fruits.
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