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Cross-level Feature Aggregation and Fusion Network for Light Field Salient Object Detection

机译:用于光场突出对象检测的跨级特征聚合和融合网络

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摘要

2D saliency detection algorithms make nothing of 3D visual information of scenes, this leads to their poor performance in challenging scene images. Moreover, light field data contains rich 3D visual information, but existing CNN-based algorithms are specifically designed for processing 2D RGB images rather than light field images. To overcome these issues, in this paper, a cross-level feature aggregation and fusion network is proposed for Light Field Salient Object Detection. To make full use of 3D visual information, two stream sub-network are designed in parallel to handle all-focus images and depth maps separately. Then some feature aggregation modules are built to aggregate cross-level visual features to identify the salient objects in scene. In addition, many feature fusion modules are designed to fuse cross-modal features from all-focus images, focal stack and depth maps, which can highlight salient object consistently by utilizing of 3D visual information. Comprehensive experiments conducted on three benchmark datasets indicate that our algorithm outperforms state-of-the-art methods both quantitatively and qualitatively on five evaluation metrics.
机译:2D显着性检测算法造成了一些景点的3D视觉信息,这导致他们在具有挑战性的场景图像中表现不佳。此外,光场数据包含丰富的3D视觉信息,但是现有的基于CNN的算法专门用于处理2D RGB图像而不是光场图像。为了克服这些问题,在本文中,提出了一种跨级特征聚合和融合网络,用于光场突出对象检测。为了充分利用3D视觉信息,两个流子网正并行设计,以单独处理全对焦图像和深度映射。然后构建某些特征聚合模块以聚合交叉级别可视功能以识别场景中的突出对象。此外,许多特征融合模块旨在融合来自全对焦图像,焦点堆叠和深度图的跨模型特征,这可以通过利用3D视觉信息来始终如一地突出突出对象。在三个基准数据集中进行的综合实验表明我们的算法在五个评估度量上定量和定性地优于最先进的方法。

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