Fast salient object detection based on multi-scale feature aggression

Xiaohu Zhang, Lei Zhu
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引用次数: 1

Abstract

Since the current CNN-based salient object detection algorithms are of slow speed, as well as fail to preserve rich information of object boundaries, which makes the regions along object contours blurred and inaccurate, a fast salient object detection algorithm with multi-scaled features aggression was proposed. Based on deep ResNet-50, four kinds of features in various resolution levels are extracted separately and then aggregated, which can make the output of network preserve more detailed information about object boundaries, so that the blurry salient maps can be solved via the proposed method. We trained an end-to-end model on THUS10K database, the resulting network can produce a saliency map with pixel-level accuracy from an input image. Extensive experiments on PascalS and DUTOMRON confirm that the proposed method achieves higher AUC and F-measure value while processing images at a rate of 15 fps, which is dramatically faster than any other eight existing methods.
基于多尺度特征攻击的快速显著目标检测
针对目前基于cnn的显著目标检测算法速度较慢,且不能保留目标边界的丰富信息,导致目标轮廓沿线区域模糊和不准确的问题,提出了一种多尺度特征攻击的快速显著目标检测算法。在deep ResNet-50的基础上,分别提取不同分辨率下的四种特征并进行聚合,使网络输出能够保留更详细的目标边界信息,从而实现模糊突出图的求解。我们在THUS10K数据库上训练了一个端到端模型,得到的网络可以从输入图像生成具有像素级精度的显著性图。在pascal和DUTOMRON上进行的大量实验证实,该方法在以15 fps的速度处理图像时获得了更高的AUC和f测量值,显著快于其他八种现有方法。
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