一种用于实现大尺寸补丁的反卷积策略支持改进的图像分类

Xinhua Zhang, Garrett T. Kenyon
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引用次数: 4

摘要

稀疏编码是一种广泛使用的从未标记图像数据中学习过完备基集的技术。我们假设,随着每个基向量跨越的图像补丁的大小增加,得到的字典应该包含更广泛的空间尺度,包括更多更好地区分对象类别的特征。以前测量补丁大小对图像分类性能的影响的努力被随着补丁大小的增加而难以维持给定水平的过完备性所困扰。在这里,我们采用了一种反卷积网络,其中过完备性与补丁大小无关。基于CIFAR10数据库的图像分类结果,我们发现优化我们的反卷积网络进行稀疏重建可以提高分类性能,这是训练epoch数的函数。与之前的报告不同,我们发现执行一定程度的稀疏性可以提高分类性能。我们还发现,随着学习到的特征数量(字典大小)和每个特征所跨越的图像补丁大小(补丁大小)的增加,分类性能也会提高,这最终是稀疏自编码器发表的最佳结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deconvolutional Strategy for Implementing Large Patch Sizes Supports Improved Image Classification
Sparse coding is a widely-used technique for learning an overcomplete basis set from unlabeled image data. We hypothesize that as the size of the image patch spanned by each basis vector increases, the resulting dictionary should encompass a broader range of spatial scales, including more features that better discriminate between object classes. Previous efforts to measure the effects of patch size on image classification performance were confounded by the difficulty of maintaining a given level of overcompleteness as the patch size is increased. Here, we employ a type of deconvolutional network in which overcompleteness is independent of patch size. Based on image classification results on the CIFAR10 database, we find that optimizing our deconvolutional network for sparse reconstruction leads to improved classification performance as a function of the number of training epochs. Different from previous reports, we find that enforcing a certain degree of sparsity improves classification performance. We also find that classification performance improves as both the number of learned features (dictionary size) and the size of the image patch spanned by each feature (patch size) are increased, ultimately the best published results for sparse autoencoders
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