利用先进的计算机视觉检测家具和家居用品

Narayana Darapaneni, S. M, Mukul Paroha, A. Paduri, Rohit George Mathew, Namith Maroli, Rohit Eknath Sawant
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引用次数: 2

摘要

由于越来越多地使用图像和视频作为数据源及其大量应用,目标检测技术一直是一个研究和发展的主题。传统的目标检测模型在训练中存在局限性,并且没有使用迁移学习。随着深度学习和神经网络的发展,更新和强大的工具已经为实现实时目标检测铺平了道路,并且具有迁移学习和在给定图像上下文中检测不同类别的多个实例的附加优势。该系统是一种基于单次射击探测器(SSD)算法的目标检测模型,经过MobileNetV2特征提取训练,可用于电子商务、酒店业、安防监控、房地产、自动驾驶汽车和地板库存管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object Detection of Furniture and Home Goods Using Advanced Computer Vision
Object Detection Technology has been a subject to much research and development due to increasing use of images and videos as data sources and their huge number of applications. Traditional models for object detection had limitations in training and did not use transfer learning for their benefit. With the evolution of deep learning and Neural networks, newer and powerful tools have made way to achieve Object Detection in real-time, with the added advantage of transfer learning and detection of multiple instances of different classes of interest in the given image context. The proposed system is an Object Detection model based on the Single Shot Detector (SSD) algorithm trained with MobileNetV2 feature extraction that can be utilized and integrated in e-commerce, hospitality industry, security and surveillance, real estate, self-driving cars and floor inventory management.
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