Generator of a Toy Dataset of Multi-Polygon Monochrome Images for Rapidly Testing and Prototyping Semantic Image Segmentation Networks

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
V. Romanuke
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引用次数: 4

Abstract

Abstract In the paper, the problem of building semantic image segmentation networks in a more efficient way is considered. Building a network capable of successfully segmenting real-world images does not require a real semantic image segmentation task. At this stage, called prototyping, a toy dataset can be used. Such a dataset can be artificial and thus may not need augmentation for training. Besides, its entries are images of much smaller size, which allows training and testing the network a way faster. Objects to be segmented are one or few convex polygons in one image. Thus, a toy dataset generator is created whose complexity is regulated by the number of edges in a polygon, the maximal number of polygons in one image, the set of scale factors, and the set of probabilities determining how many polygons in a current image are generated. The dataset capacity and image size are concurrently adjustable, although they are much less influential.
用于快速测试和原型语义图像分割网络的多多边形单色图像玩具数据集生成器
摘要本文考虑了以更有效的方式构建语义图像分割网络的问题。构建能够成功分割真实世界图像的网络不需要真正的语义图像分割任务。在这个称为原型的阶段,可以使用玩具数据集。这样的数据集可以是人工的,因此可能不需要用于训练的扩充。此外,它的条目是尺寸小得多的图像,这使得训练和测试网络的速度更快。要分割的对象是一个图像中的一个或几个凸多边形。因此,创建了一个玩具数据集生成器,其复杂性由多边形中的边的数量、一个图像中多边形的最大数量、比例因子集和确定当前图像中生成多少多边形的概率集来调节。数据集容量和图像大小可以同时调整,尽管它们的影响要小得多。
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来源期刊
Electrical Control and Communication Engineering
Electrical Control and Communication Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
14.30%
发文量
0
审稿时长
12 weeks
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