基于模型CNN学习的自我约束目标识别

Yida Wang, Weihong Deng
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引用次数: 7

摘要

CNN在基于大量真实图像的目标识别方面表现出了优异的性能。为了减少采集真实图像的工作量,我们提出了一种由triplet和softmax联合损失函数引导的连接自我约束学习结构,用于物体识别。局部连接的自动编码器从有背景和没有背景的渲染图像中训练,用于根据环境变量进行对象重建,产生一个额外的通道,自动连接到RGB通道作为分类网络的输入。这种结构使得使用我们的渲染策略直接从CNN训练一个基于合成数据的softmax分类器成为可能。与GoogleNet相比,我们的结构将PASCAL和ImageNet数据库中基于真实照片和3D模型的训练差距缩小了一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-restraint object recognition by model based CNN learning
CNN has shown excellent performance on object recognition based on huge amount of real images. For training with synthetic data rendered from 3D models alone to reduce the workload of collecting real images, we propose a concatenated self-restraint learning structure lead by a triplet and softmax jointed loss function for object recognition. Locally connected auto encoder trained from rendered images with and without background used for object reconstruction against environment variables produces an additional channel automatically concatenated to RGB channels as input of classification network. This structure makes it possible training a softmax classifier directly from CNN based on synthetic data with our rendering strategy. Our structure halves the gap between training based on real photos and 3D model in both PASCAL and ImageNet database compared to GoogleNet.
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