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Multi-feature Based Automated Flower Harvesting Techniques in Deep Convolutional Neural Networking

机译:基于多特征的深度卷积神经网络自动花卉收获技术

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In floriculture, automatic flower harvesting through robotic machines is in recent trends. Here in this research work we have proposed a calculation mechanism for automatic flower harvesting technique using deep convolutional neural network (DCNN). Here we also incorporate Faster R-CNN method which uses high-quality region proposals for flower detection from image generated by Region Proposal Network (RPN). Our aim is to make a fast, reliable and accurate system for detecting and harvesting the flower crop. The key concept of the system is to provide an automated robotic system which can detect the ripened flower crop and yield them; automatically without any human interference. Our research is based on the marigold flowers of different color and size. Here we described two methodologies first we present an approach for the flower detection from the image dataset captured from the camera and other for providing the accurate information to the automated robot to pluck the flowers from the plant and collect all them into the container.
机译:在花卉中,通过机器人机器采伐的自动花卉是最近的趋势。在本研究工作中,我们已经提出了一种使用深卷积神经网络(DCNN)的自动花卉收集技术的计算机制。在这里,我们还包含了更快的R-CNN方法,该方法采用了由区域提议网络(RPN)产生的图像的高质量区域提案。我们的宗旨是为检测和收获花卉作物进行快速,可靠和准确的系统。该系统的关键概念是提供一种自动机器人系统,可以检测成熟的花卉作物并产生它们;自动没有任何人类干扰。我们的研究是基于不同颜色和大小的万寿菊花。在这里,我们首先描述了两种方法,我们提出了一种从照相机捕获的图像数据集的花检测方法,用于向自动机器人提供准确的信息,以将花朵从工厂拔出并将其收集到容器中。

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