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A novel hybrid model for video salient object detection

机译:用于视频突出物体检测的新型混合模型

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At present, there are a few video salient object detection models that can simulate the attention behavior in the dynamic scene. However, due to the lack of video salient object detection data sets and the camera motion interference, the existing models are insufficient to capture the overall shape and precise boundaries of targets. Hence, a new hybrid model, called NHM, connects the attention feedback network and pyramid dilated convolution module to obtain abundant spatial saliency information, then uses the saliency-shift-aware convLSTM module to learn temporal saliency information. Instead of directly feeding the attention feedback network results into the pyramid dilated convolution module, we extract feature maps of different scales from five decoder blocks and transfer them to the pyramid dilated convolution module. In this way, we could make better use of multi-scale features. Furthermore, a new hybrid loss function is proposed to obtain fine boundaries by introducing the boundary- enhanced loss. The experimental results show that the proposed model is superior or equal to the state-of-the-art models.
机译:目前,有一些视频突出对象检测模型可以模拟动态场景中的注意力。然而,由于视频突出对象检测数据集和相机运动干扰,现有模型不足以捕获目标的整体形状和精确边界。因此,新的混合模型称为NHM,将注意力反馈网络和金字塔扩张的卷积模块连接,以获得丰富的空间显着信息,然后使用显着变换感知Convlstm模块来学习时间显着信息。而不是直接将注意力反馈网络结果进入金字塔扩张的卷积模块,而是从五个解码器块中提取不同尺度的特征映射,并将其传送到金字塔扩张的卷积模块。通过这种方式,我们可以更好地利用多尺度特征。此外,提出了一种新的混合损失函数来通过引入边界增强的损失来获得微边界。实验结果表明,所提出的模型优于或等于最先进的模型。

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