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Transformation-Invariant Convolutional Jungles

机译:不变变换卷积丛林

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Many Computer Vision problems arise from information processing of data sources with nuisance variances like scale, orientation, contrast, perspective foreshortening or - in medical imaging - staining and local warping. In most cases these variances can be stated a priori and can be used to improve the generalization of recognition algorithms. We propose a novel supervised feature learning approach, which efficiently extracts information from these constraints to produce interpretable, transformation-invariant features. The proposed method can incorporate a large class of transformations, e.g., shifts, rotations, change of scale, morphological operations, non-linear distortions, photometric transformations, etc. These features boost the discrimination power of a novel image classification and segmentation method, which we call Transformation-Invariant Convolutional Jungles (TICJ). We test the algorithm on two benchmarks in face recognition and medical imaging, where it achieves state of the art results, while being computationally significantly more efficient than Deep Neural Networks.
机译:许多计算机视觉问题源于对数据源的信息处理,这些数据源具有令人讨厌的差异,例如缩放,方向,对比度,透视图缩短或(在医学成像中)染色和局部变形。在大多数情况下,这些差异可以先验地表述,并且可以用于改善识别算法的通用性。我们提出了一种新颖的有监督的特征学习方法,该方法可有效地从这些约束条件中提取信息以产生可解释的,不变变换的特征。所提出的方法可以结合一大类变换,例如移位,旋转,缩放比例,形态学操作,非线性失真,光度变换等。这些特征增强了新颖的图像分类和分割方法的辨别能力,从而可以我们称为变换不变卷积丛林(TICJ)。我们在脸部识别和医学成像的两个基准上测试该算法,在达到计算结果最先进的同时,其计算效率也比深度神经网络显着提高。

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