论文标题
通过图像特征的雾气揭示位置信息模式的面具
Unveiling The Mask of Position-Information Pattern Through the Mist of Image Features
论文作者
论文摘要
最近的研究表明,卷积神经网络中的桨叶编码绝对位置信息,这些信息可能会对某些任务的模型性能产生负面影响。但是,量化位置信息强度的现有指标仍然不可靠,并且经常导致错误的结果。为了解决这个问题,我们提出了用于测量(和可视化)编码位置信息的新型指标。我们正式将编码的信息定义为PPP(填充的位置信息模式),并进行一系列实验以研究其特性及其形成。所提出的指标比基于Posenet的现有指标和F-CONV测试更可靠地衡量位置信息的存在。我们还证明,对于任何现存(和拟议的)填充方案,PPP主要是一种学习伪像,较少依赖于基础填充方案的特征。
Recent studies show that paddings in convolutional neural networks encode absolute position information which can negatively affect the model performance for certain tasks. However, existing metrics for quantifying the strength of positional information remain unreliable and frequently lead to erroneous results. To address this issue, we propose novel metrics for measuring (and visualizing) the encoded positional information. We formally define the encoded information as PPP (Position-information Pattern from Padding) and conduct a series of experiments to study its properties as well as its formation. The proposed metrics measure the presence of positional information more reliably than the existing metrics based on PosENet and a test in F-Conv. We also demonstrate that for any extant (and proposed) padding schemes, PPP is primarily a learning artifact and is less dependent on the characteristics of the underlying padding schemes.