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Research of animals image semantic segmentation based on deep learning

机译:基于深度学习的动物图像语义分割研究

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It is imperative for us to develop the technology of image semantic segmentation with the increasing demand in the image processing. Nowadays, the development of deep learning is of great significance to the improvement of image segmentation. Furthermore, the paper discussed the relationship between image semantic segmentation and animal image research based on the actual situation, and found that animal image processing technology plays a more important role in the field of protecting precious animals. The end-to-end network training of this paper is consisted of Fully Convolutional Network (FCN) for the front end and Conditional Random Fields as Recurrent Neural Networks (CRF-RNN) for the back end via comparing a variety of research methods. The experiments achieved desired outcome for the semantic segmentation of animal images by utilizing Caffe deep learning framework and explained the implementation details from the aspects of training and testing.
机译:随着图像处理需求的不断增长,迫切需要发展图像语义分割技术。如今,深度学习的发展对改善图像分割具有重要意义。此外,论文还根据实际情况讨论了图像语义分割与动物图像研究之间的关系,发现动物图像处理技术在珍贵动物保护领域起着更为重要的作用。通过比较多种研究方法,本文的端到端网络训练由前端的完全卷积网络(FCN)和后端的条件随机字段作为递归神经网络(CRF-RNN)组成。实验通过利用Caffe深度学习框架为动物图像的语义分割取得了预期的结果,并从训练和测试的角度解释了实现细节。

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