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Improved classification robustness for noisy cell images represented as principal-component projections in a hybrid recognition system

机译:改进的混合鲁棒性,用于在混合识别系统中表示为主要成分投影的嘈杂细胞图像

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Different types of cells are recognized from their noisy images by use of a hybrid recognition system that consists of a learning principal-component analyzer and an image-classifier network. The inputs to the feed-forward backpropagation classifier are the first 15 principal components of the 10 x 10 pixel image to be classified. The classifier was trained with clear images of cells in metaphase, unburst cells, and other erroneous patterns. Experimental results show that the recognition system is robust to in, age scaling and rotation, as well as to image noise. Cell recognition is demonstrated for images that are corrupted with additive Gaussian noise, impulse noise, and quantization errors. We compare the performance of the hybrid recognition system with that of a conventional three-layer feed-forward backpropagation network that uses the raw image directly as input. #1998 Optical Society of America OCIS codes: 070.5010,200.4260.
机译:通过使用由学习主成分分析仪和图像分类器网络组成的混合识别系统,可以从嘈杂的图像中识别出不同类型的细胞。前馈反向传播分类器的输入是要分类的10 x 10像素图像的前15个主要成分。使用清晰的中期细胞图像,未爆发细胞和其他错误模式训练分类器。实验结果表明,该识别系统对于年龄缩放和旋转以及图像噪声均具有鲁棒性。对于具有加性高斯噪声,脉冲噪声和量化误差而损坏的图像,已证明了单元识别。我们将混合识别系统的性能与直接使用原始图像作为输入的常规三层前馈反向传播网络的性能进行了比较。 #1998美国光学学会OCIS编码:070.5010,200.4260。

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