Abstract

Saliency detection as an active research direction in image understanding and analysis has been studied extensively. In this paper, to improve the accuracy of saliency detection, we propose an efficient unsupervised salient object detection method. The first step of our method is that we extract local low-level features of each superpixel after segmenting the image into different scale parts, which helps to locate the approximate locations of salient objects. Then, we use convolutional neural networks to extract high-level, semantically rich features as complementary features of each superpixel, and low-level features, as well as high-level features of each superpixel, are incorporated into a new feature vector to measure the distance between different superpixels. The last step is that we use a manifold space-ranking method to calculate the saliency of each superpixel. Extensive experiments over four challenging datasets indicate that the proposed method surpasses state-of-the-art methods and is closer to the ground truth.

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