Abstract

The proliferation of remote sensing imagery motivates a surge of research interest in image processing such as feature extraction and scene recognition, etc. Among them, scene recognition (classification) is a typical learning task that focuses on exploiting annotated images to infer the category of an unlabeled image. Existing scene classification algorithms predominantly focus on static data and are designed to learn discriminant information from clean data. They, however, suffer from two major shortcomings, i.e., the noisy label may negatively affect the learning procedure and learning from scratch may lead to a huge computational burden. Thus, they are not able to handle large-scale remote sensing images, in terms of both recognition accuracy and computational cost. To address this problem, in the paper, we propose a noise-resilient online classification algorithm, which is scalable and robust to noisy labels. Specifically, ramp loss is employed as loss function to alleviate the negative affect of noisy labels, and we iteratively optimize the decision function in Reproducing Kernel Hilbert Space under the framework of Online Gradient Descent (OGD). Experiments on both synthetic and real-world data sets demonstrate that the proposed noise-resilient online classification algorithm is more robust and sparser than state-of-the-art online classification algorithms.

Highlights

  • Due to the rapid development of sensor and aerospace technology, more and more high-resolution images are available [1,2,3,4,5,6]

  • To enable the online classification on streaming remote sensing images and to alleviate the negative impacts from noisy labels, we generalize the ramp loss designed for batch learning algorithm, i.e., ramp-Support Vector Machine (SVM), to the online learning setting

  • The goal is to learn a series of nonlinear mapping function f (t): Rd → R based on a sequence of examples {(xi, yi)}it=1, where t is the current time stamp, d stands for the number of features, xi ∈ Rd denotes the feature vector of remote sensing image and yi ∈ {+1, −1} is the scene category of an image

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Summary

Introduction

Due to the rapid development of sensor and aerospace technology, more and more high-resolution images are available [1,2,3,4,5,6]. The requirement to have all the training data in prior to training poses a serious constraint in the application of traditional scene classification algorithms based on batch learning techniques. To this end, it is necessary and of vital importance to perform online scene classification to adapt to the streaming data . To tackle the above challenges, in this paper, we propose a noise-resilient online multi-classification algorithm to promote the scene classification problem for remote sensing images. The noise-resilient online multi-classification algorithm we proposed in this paper has two major merits:.

Related Work
Method
Ramp Loss
Online Learning Algorithm
Noise-Resilient Online Multi-Classification Algorithm
Experiments
4: Receive true label yt
Parameter Sensitivity Study
Synthesis Data Sets
Pegasos
Benchmark Data Sets
Findings
Conclusions
Full Text
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