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Deep structured-output regression learning for computational color constancy

机译:深度结构化输出回归学习,可实现计算色彩恒定性

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The color constancy problem is addressed by structured-output regression on the values of the fully-connected layers of a convolutional neural network. The AlexNet and the VGG are considered and VGG slightly outperformed AlexNet. Best results were obtained with the first fully-connected “fc6” layer and with multi-output support vector regression. Experiments on the SFU Color Checker and Indoor Dataset benchmarks demonstrate that our method achieves competitive performance, outperforming the state of the art on the SFU indoor benchmark.
机译:通过对卷积神经网络的完全连接层的值进行结构化输出回归,可以解决颜色恒定性问题。考虑了AlexNet和VGG,VGG的性能略好于AlexNet。使用第一个完全连接的“ fc6”层和多输出支持向量回归可获得最佳结果。在SFU Color Checker和室内数据集基准上进行的实验表明,我们的方法具有竞争优势,优于SFU室内基准上的最新技术。

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