Weakly Supervised Spatial Deep Learning based on Imperfect Vector Labels with Registration Errors

Zhe Jiang, Wenchong He, M. Kirby, S. Asiri, Dan Yan
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引用次数: 2

Abstract

This paper studies weakly supervised learning on spatial raster data based on imperfect vector training labels. Given raster feature imagery and imperfect (weak) vector labels with location registration errors, our goal is to learn a deep learning model for pixel classification and refine vector labels simultaneously. The problem is important in many geoscience applications such as streamline delineation and road mapping from earth imagery, where annotating imperfect coarse vector labels is far more efficient than drawing precise labels. But the problem is challenging due to the misalignment of vector labels with raster feature pixels and the need to infer true vector label location while learning neural network parameters. Existing works on weakly supervised learning often focus on noise and errors in label semantics, assuming label locations to be either correct or irrelevant (e.g., identical and independently distributed). A few works exist on label registration errors, but these methods often focus on label misalignment on object segment boundaries at the pixel level without guaranteeing vector continuity. To fill the gap, this paper proposes a spatial learning framework based on Expectation-Maximization that iteratively updates deep neural network parameters while inferring true vector label locations. Specifically, inference of true vector locations is based on both the current pixel class predictions and the geometric properties of vectors. Evaluations on real-world high-resolution remote sensing datasets in National Hydrography Dataset (NHD) refinement show that the proposed framework outperforms baseline methods in classification accuracy and refined vector quality.
基于配准错误的不完全向量标签的弱监督空间深度学习
本文研究了基于不完全向量训练标签的空间栅格数据弱监督学习。给定栅格特征图像和带有位置配准错误的不完美(弱)向量标签,我们的目标是学习一个深度学习模型,用于像素分类并同时改进向量标签。这个问题在许多地球科学应用中都很重要,比如从地球图像中进行流线划定和道路测绘,在这些应用中,标注不完美的粗向量标签比绘制精确的标签要有效得多。但由于矢量标签与栅格特征像素的不对齐以及在学习神经网络参数时需要推断真实的矢量标签位置,该问题具有挑战性。关于弱监督学习的现有工作通常集中在标签语义中的噪声和错误上,假设标签位置是正确的或不相关的(例如,相同且独立分布)。在标签配准误差方面已有一些研究,但这些方法往往侧重于像素级目标段边界上的标签错位,无法保证矢量的连续性。为了填补这一空白,本文提出了一种基于期望最大化的空间学习框架,该框架在推断真实向量标签位置的同时迭代更新深度神经网络参数。具体来说,真实向量位置的推断是基于当前像素类预测和向量的几何属性。在国家水文数据集(NHD)精化的真实高分辨率遥感数据集上进行的评估表明,该框架在分类精度和精化向量质量方面优于基线方法。
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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