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Fully Unsupervised Salient Object Detection

机译:完全不受监督的显着物体检测

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摘要

Object detection is one of the most important components of machine vision. Today, object detection is used in a variety of areas, including guidance, driving, industry, and other key areas. For this reason, many algorithms have been proposed in this regard, with the aim of increasing the quality of detecting objects in an image. Since the correct representation of the object in the image is considered an essential requirement, in this article, a five-step algorithm is proposed for object detection. Experiments are performed on a given database in comparison with other methods in this area. In this algorithm, a color space is used to extract the feature and from self-encoder to remove the noise in the property matrix. Then, by scoring the clusters created based on the features, using the mean shift algorithm, the maximum pixels of the object are detected and separated from the background. The results of the experiments show performance of the proposed method in dealing with photos that involve challenges from multiple objects to changes the image.
机译:目标检测是机器视觉最重要的组成部分之一。如今,对象检测已在各种领域中使用,包括制导,驾驶,工业和其他关键领域。由于这个原因,在这方面已经提出了许多算法,以提高检测图像中的物体的质量。由于在图像中正确表示对象被认为是必不可少的要求,因此本文提出了一种五步算法进行对象检测。与该领域的其他方法相比,在给定的数据库上进行了实验。在该算法中,颜色空间用于提取特征并从自编码器中去除属性矩阵中的噪声。然后,通过对基于特征创建的聚类进行评分,使用均值平移算法,可以检测到对象的最大像素并将其与背景分离。实验结果表明,所提出的方法在处理涉及多个物体挑战以改变图像的照片方面的性能。

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