In this study, a novel feature coding method that exploits invariance for transformations represented by a finite group of orthogonal matrices is proposed. We prove that the group-invariant feature vector contains sufficient discriminative information when learning a linear classifier using convex loss minimization. Based on this result, a novel feature model that explicitly consider group action is proposed for principal component analysis and k-means clustering, which are commonly used in most feature coding methods, and global feature functions. Although the global feature functions are in general complex nonlinear functions, the group action on this space can be easily calculated by constructing these functions as tensor-product representations of basic representations, resulting in an explicit form of invariant feature functions. The effectiveness of our method is demonstrated on several image datasets.
翻译:在本研究中,提出了一种新颖的特征编码方法,利用固定组合正向矩阵代表的变异来进行变换。我们证明,在使用峰值损失最小化法学习线性分类器时,群变特性矢量含有足够的歧视信息。根据这一结果,为主要组成部分分析和主要特征编码方法常用的k- means群集和全球特征功能提出了一个明确考虑集体行动的新颖特征模型。虽然全球特征功能一般是复杂的非线性功能,但通过将这些功能构建为基本表达法的抗拉产品表示法,可以很容易地计算出这一空间的群集行动,从而形成一种明确的形式的不变特性功能。我们的方法的有效性在若干图像数据集中得到了证明。</s>