基于深度学习的白底照片识别、目标检测与分割

Xiao Ning, Wen Zhu, Shifeng Chen
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引用次数: 7

摘要

图像识别、目标检测和分割一直是计算机视觉任务中的一个热门问题。本文用深度学习方法解决了白底照片的识别、目标检测和分割问题。特别是,我们首先训练了一个基于GoogLeNet的识别模型来判断一张照片是否为白色背景。然后,我们提出了一种主要的目标检测算法,以更快的R-CNN去除标识、字符等不必要的元素。最终采用CRF-RNN网络和Grabcut相结合的主要目标分割方法,平滑地消除阴影区域,获得精细的分割结果。所有的探索算法都是用Nvidia的Caffe和Tesla K80实时实现的。最新的测试实验表明,该方法的识别准确率为96%,检测准确率为94%,并成功地获得了用于400 * 400溶液的可接受的精细分割结果。所提出的技术方案为复杂背景照片的计算机视觉任务提供了一种替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition, object detection and segmentation of white background photos based on deep learning
Image recognition, object detection and segmentation have been a popular problem in computer vision tasks. This paper addresses the recognition, object detection and segmentation issues in white background photos with deep learning method. In particular, we firstly train a recognition model based on GoogLeNet to judge whether a photo is white background. Then we propose a main object detecting algorithm to eliminate unnecessary elements such as logos, characters with Faster R-CNN. Eventually a main object segmentation method combining both CRF-RNN network and Grabcut is adopted to smoothly eliminate the shadow area and obtain the fine segmentation results. All exploring algorithms are implemented in real time with Caffe and Tesla K80 from Nvidia. Latest testing experiments demonstrate that an accuracy of 96% in recognition and 94%in detection is resulted and an acceptable fine segmentation results used for solution of 400 ∗ 400 is successfully achieved. The proposed technical scheme offers an alternative to computer vision tasks in complex background photos.
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