Image segmentation is a very popular and important task in computer vision. In this paper, inverse quantum Fourier transform (IQFT) for image segmentation has been explored and a novel IQFT-inspired algorithm is proposed and implemented by leveraging the underlying mathematical structure of the IQFT. Specifically, the proposed method takes advantage of the phase information of the pixels in the image by encoding the pixels' intensity into qubit relative phases and applying IQFT to classify the pixels into different segments automatically and efficiently. To the best of our knowledge, this is the first attempt of using IQFT for unsupervised image segmentation. The proposed method has low computational cost comparing to the deep learning-based methods and more importantly it does not require training, thus make it suitable for real-time applications. The performance of the proposed method is compared with K-means and Otsu-thresholding. The proposed method outperforms both of them on the PASCAL VOC 2012 segmentation benchmark and the xVIEW2 challenge dataset by as much as 50% in terms of mean Intersection-Over-Union (mIOU).
翻译:在计算机视觉中,图像分割是一项非常受欢迎和重要的任务。 在本文中,探索了用于图像分割的反反量 Fourier变换(IQFT),并通过利用IQFT的基本数学结构,提出并实施了一个新型的IQFT启发算法。具体地说,拟议方法利用图像像素的阶段信息,将像素强度编码为qubit相对阶段,并应用IQFT自动和高效地将像素分类为不同部分。据我们所知,这是首次尝试使用IQFT进行不受监督的图像分割。拟议方法与深层学习法相比计算成本较低,更重要的是,不需要培训,因此不适于实时应用。拟议方法的性能与K-mels和Otsu-srest相比较。拟议方法在PaSCAL VOC 2012 分解基准和 XVIEW2挑战数据中,以平均区段内值为50%的方式设定。