用于盲图像质量评价的FP-Nets

Philipp Grüning, E. Barth
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引用次数: 2

摘要

摘要特征-产品网络(FP-nets)是一种受生物视觉原理启发的新型深度网络结构。这些网络包含所谓的fp块,它们为每个输入特征映射学习两个不同的过滤器,然后将其输出相乘。这种结构是受到末端停止神经元模型的启发,末端停止神经元在皮层区域V1中很常见,尤其是在V2中。本文将FP-nets应用于盲图像质量评价(IQA)的三个基准。他们表明,通过使用FP-nets,他们可以获得提供最先进性能的网络,同时比竞争模型明显更紧凑。他们获得的进一步改进是由于一个简单的注意力机制。他们报告的好结果可能与他们采用生物启发设计原则有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FP-Nets for Blind Image Quality Assessment
Abstract Feature-Product networks (FP-nets) are a novel deep-network architecture inspired by principles of biological vision. These networks contain the so-called FP-blocks that learn two different filters for each input feature map, the outputs of which are then multiplied. Such an architecture is inspired by models of end-stopped neurons, which are common in cortical areas V1 and especially in V2. The authors here use FP-nets on three image quality assessment (IQA) benchmarks for blind IQA. They show that by using FP-nets, they can obtain networks that deliver state-of-the-art performance while being significantly more compact than competing models. A further improvement that they obtain is due to a simple attention mechanism. The good results that they report may be related to the fact that they employ bio-inspired design principles.
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