Two Stage Semantic Segmentation by SEEDS and Fork Net

Aritra Mukherjee, Prithwish Jana, Sayak Chakraborty, S. Saha
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引用次数: 4

Abstract

Semantic segmentation of image is one of the most challenging and researched topic in the field of computer vision. Statistical methods can be employed for the task with low computational resources, but in a diverse natural environment, it fails to label many complicated objects. Deep learning methods are quite popular now for high accuracy but dense semantic segmentation at pixel level accuracy is very resource-intensive and not suitable for robot vision. Proposed methodology merges the best of both worlds to semantically label superpixels computed by a statistical method, with a deep net. The deep convolution network is novel in its use of superpixels in different fields of vision. The methodology is tested on the Pascal VOC dataset and compared with recent popular approaches. The results show that the proposed methodology is on par with the best results.
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基于seed和Fork网络的两阶段语义分割
图像的语义分割是计算机视觉领域最具挑战性的研究课题之一。统计方法可以用于计算资源较少的任务,但在多样化的自然环境中,它无法标记许多复杂的对象。目前深度学习方法以其高精度而广受欢迎,但像素级精度的密集语义分割非常耗费资源,不适合机器人视觉。所提出的方法结合了两种方法的优点,利用深度网络对统计方法计算的超像素进行语义标记。深度卷积网络在不同视场中使用超像素是一种新颖的方法。该方法在Pascal VOC数据集上进行了测试,并与最近流行的方法进行了比较。结果表明,所提出的方法与最佳结果相当。
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