论文标题
对比度加权词典学习的显着性检测遥感图像
Contrast-weighted Dictionary Learning Based Saliency Detection for Remote Sensing Images
论文作者
论文摘要
对象检测是遥感图像分析中的重要任务。为了降低冗余信息的计算复杂性并提高图像处理的效率,视觉显着性模型已被广泛应用于该领域。在本文中,为遥感图像提出了基于对比度加权词典学习(CDL)的新型显着检测模型。具体而言,拟议的CDL从正面和负样品中学习了显着和非偏好原子来构建判别词典,其中提出了对比度加权术语,以鼓励在学识渊博的显着字典中存在对比度加权模式,同时使它们不在非相位字典中。然后,我们通过结合稀疏表示(SR)和重建误差的系数来衡量显着性。此外,通过使用拟议的关节显着性措施,基于判别词典生成了多种显着图。最后,提出了一种基于全局梯度优化的融合方法来整合多个显着性图。四个数据集的实验结果表明,所提出的模型优于其他最先进的方法。
Object detection is an important task in remote sensing image analysis. To reduce the computational complexity of redundant information and improve the efficiency of image processing, visual saliency models have been widely applied in this field. In this paper, a novel saliency detection model based on Contrast-weighted Dictionary Learning (CDL) is proposed for remote sensing images. Specifically, the proposed CDL learns salient and non-salient atoms from positive and negative samples to construct a discriminant dictionary, in which a contrast-weighted term is proposed to encourage the contrast-weighted patterns to be present in the learned salient dictionary while discouraging them from being present in the non-salient dictionary. Then, we measure the saliency by combining the coefficients of the sparse representation (SR) and reconstruction errors. Furthermore, by using the proposed joint saliency measure, a variety of saliency maps are generated based on the discriminant dictionary. Finally, a fusion method based on global gradient optimization is proposed to integrate multiple saliency maps. Experimental results on four datasets demonstrate that the proposed model outperforms other state-of-the-art methods.