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Multi-scale fusion and non-local attention mechanism based salient object detection

机译:基于多尺度融合和非本地注意机制的突出物体检测

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摘要

With the development of deep learning, researches in the field of computer vision are attracting more attention. As the pre-processing operation of visual tasks, a salient model may focus on pure architectures. The paper proposes a new multi-scale fusion network to enrich high-level redundant information with the enlarged receptive field. With the guidance of attention mechanism, the framework can capture more effective correlation spatial and channels information. Building a short-connection between high-level and each level features to transmit the contextual features. The model can be used in a variety of complex scenes for end-to- end image detection, with simple structure and strong versatility. Experimental results obtained on multiple common datasets have shown that the proposed model achieved better performance both in the visual effect and the accuracy for small object and multi-target detection.
机译:随着深度学习的发展,计算机愿景领域的研究正在吸引更多的关注。作为视觉任务的预处理操作,突出模型可以专注于纯架构。本文提出了一种新的多尺度融合网络,可以通过放大的接收领域丰富高级冗余信息。随着注意力机制的指导,框架可以捕获更有效的相关空间和频道信息。在高级和每个级别功能之间构建短连接以传输上下文功能。该模型可用于各种复杂的场景,用于端到端图像检测,结构简单和强大的多功能性。在多个常见数据集上获得的实验结果表明,所提出的模型在视觉效果和小对象和多目标检测的准确性方面取得了更好的性能。

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