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A New Deep Learning Application Based on Movidius NCS for Embedded Object Detection and Recognition

机译:基于Movidius NCS进行嵌入对象检测和识别的新深度学习应用

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摘要

Nowadays, real-time detection and recognition of objects is a vital task in image processing and computer vision. This study presents an embedded powerful technique for real-time object detection and recognition that runs at high frames per second (FPS) on an embedded platform with movidius neural compute stick (NCS). This can be done by applying a deep learning for computer vision. We recommended an object detection and recognition for real-time video by using deep learning technique and OpenCV libraries. It includes the single shot detector (SSD) algorithm with a MobileNet architecture that are trained with caffe framework. In this paper, Raspberry Pi 3 was utilized to implement this system. So, it helps to monitor and captures the frames and detect and recognize the objects. Also, we used movidius neural compute stick that can be utilized with the Raspberry Pi 3 to achieve high FPS. The proposed method applies a few enhancements such as default boxes, multi scale features and depthwise separable convolution. These enhancements permit the proposed system to get a high accuracy in detection and recognition of objects. Engineering.
机译:如今,实时检测和对象的识别是图像处理和计算机视觉中的重要任务。本研究提出了一种用于实时对象检测和识别的嵌入式强大的技术,其在具有Movidius神经计算棒(NCS)的嵌入式平台上的高帧(FPS)在高帧(FPS)中运行。这可以通过对计算机愿景应用深度学习来完成。我们建议使用深度学习技术和OpenCV库进行实时视频的对象检测和识别。它包括单次探测器(SSD)算法,带有Caffe框架训练的MobileNet架构。在本文中,利用覆盆子PI 3实施该系统。因此,它有助于监视并捕获帧并检测并识别对象。此外,我们使用了Movidius神经计算棒,可以与覆盆子PI 3一起使用以实现高FPS。该方法应用了一些增强功能,例如默认框,多尺度特征和深度可分离的卷积。这些增强功能允许建议的系统在检测和识别对象中获得高精度。工程。

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