deshadownnet:一个用于阴影去除的多上下文嵌入深度网络

Liangqiong Qu, Jiandong Tian, Shengfeng He, Yandong Tang, Rynson W. H. Lau
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引用次数: 195

摘要

阴影去除是一项具有挑战性的任务,因为它需要对阴影的检测/注释以及对场景的语义理解。在本文中,我们提出了一个自动的端到端深度神经网络(DeshadowNet)来统一解决这些问题。DeshadowNet采用多上下文架构设计,通过从三个不同角度嵌入信息来预测输出阴影。第一个全局网络从全局视图中提取阴影特征。从全局网络中导出两层特征,并将其转移到两个并行网络中。其中一个是提取输入图像的外观,另一个是对最终预测的语义理解。这两个互补的网络生成多上下文特征,以获得具有精细局部细节的阴影哑光。为了评估该方法的性能,我们构建了第一个包含3088对图像的大规模基准测试。在两个公开可用的基准测试和我们的大规模基准测试上进行的大量实验表明,所提出的方法优于几种最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeshadowNet: A Multi-context Embedding Deep Network for Shadow Removal
Shadow removal is a challenging task as it requires the detection/annotation of shadows as well as semantic understanding of the scene. In this paper, we propose an automatic and end-to-end deep neural network (DeshadowNet) to tackle these problems in a unified manner. DeshadowNet is designed with a multi-context architecture, where the output shadow matte is predicted by embedding information from three different perspectives. The first global network extracts shadow features from a global view. Two levels of features are derived from the global network and transferred to two parallel networks. While one extracts the appearance of the input image, the other one involves semantic understanding for final prediction. These two complementary networks generate multi-context features to obtain the shadow matte with fine local details. To evaluate the performance of the proposed method, we construct the first large scale benchmark with 3088 image pairs. Extensive experiments on two publicly available benchmarks and our large-scale benchmark show that the proposed method performs favorably against several state-of-the-art methods.
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