Backbone Neural Network Design of Single Shot Detector from RGB-D Images for Object Detection

P. Sharma, Damian Valles
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引用次数: 4

Abstract

Recognition technology has gained state of art performance with the dawn of deep convolutional neural network and with these achievements in the field of computer vision, machine learning and 3D sensor, industries are near to start new era of the automation. However, object detection for robotic grasping in varying environment, low illumination, occlusion and partial images gives poor accuracy and speed to detect object. In this research, a multimodal architecture is designed to be used as a base network/ backbone network of Single Shot Detector (SSD). This architecture uses RGB and Depth images as an input and gives single output. Most of the researchers used VGG16/19, ResNet and MobileNet for detection purposes. In this paper, a new architecture is designed to perform a specific task of grasping. For classification using RGB-D architecture, it achieved an average accuracy of 95% with the learning rate of 0.0001 and outperforms the other architectures in accuracy for limited objects.
基于RGB-D图像的单镜头目标检测骨干神经网络设计
随着深度卷积神经网络的出现,以及计算机视觉、机器学习和3D传感器领域的这些成就,识别技术已经获得了最先进的表现,工业即将开始自动化的新时代。然而,机器人抓取的目标检测在不同的环境、低照度、遮挡和局部图像下,检测目标的精度和速度较差。在本研究中,设计了一种多模态架构作为单次发射探测器(SSD)的基网/骨干网。该架构使用RGB和Depth图像作为输入,并给出单个输出。大多数研究人员使用VGG16/19、ResNet和MobileNet进行检测。本文设计了一种新的结构来执行特定的抓取任务。对于使用RGB-D架构的分类,其平均准确率达到95%,学习率为0.0001,并且在有限对象的准确率方面优于其他架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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