Representative Batch Normalization with Feature Calibration

Shangqi Gao, Qi Han, Duo Li, Ming-Ming Cheng, Pai Peng
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引用次数: 41

Abstract

Batch Normalization (BatchNorm) has become the default component in modern neural networks to stabilize training. In BatchNorm, centering and scaling operations, along with mean and variance statistics, are utilized for feature standardization over the batch dimension. The batch dependency of BatchNorm enables stable training and better representation of the network, while inevitably ignores the representation differences among instances. We propose to add a simple yet effective feature calibration scheme into the centering and scaling operations of BatchNorm, enhancing the instance-specific representations with the negligible computational cost. The centering calibration strengthens informative features and reduces noisy features. The scaling calibration restricts the feature intensity to form a more stable feature distribution. Our proposed variant of BatchNorm, namely Representative BatchNorm, can be plugged into existing methods to boost the performance of various tasks such as classification, detection, and segmentation. The source code is available in http://mmcheng.net/rbn.
具有特征校准的代表性批处理归一化
批归一化(BatchNorm)已经成为现代神经网络稳定训练的默认组件。在BatchNorm中,定心和缩放操作以及均值和方差统计用于批处理维度上的特征标准化。BatchNorm的批依赖性使得训练更加稳定,能够更好地表示网络,但不可避免地忽略了实例之间的表示差异。我们建议在BatchNorm的定心和缩放操作中添加一个简单而有效的特征校准方案,以忽略不计的计算成本增强特定实例的表示。定心校正增强了信息特征,降低了噪声特征。尺度标定限制了特征强度,形成更稳定的特征分布。我们提出的BatchNorm的变体,即Representative BatchNorm,可以插入到现有的方法中,以提高分类、检测和分割等各种任务的性能。源代码可从http://mmcheng.net/rbn获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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