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DeepPrimitive: Image decomposition by layered primitive detection
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作者 Jiahui Huang Jun Gao +4 位作者 Vignesh Ganapathi-Subramanian Hao SU Yin Liu Chengcheng Tang leonidas j.guibas 《Computational Visual Media》 CSCD 2018年第4期385-397,共13页
The perception of the visual world through basic building blocks, such as cubes, spheres, and cones gives human beings a parsimonious understanding of the visual world. Thus, efforts to find primitive-based geometric ... The perception of the visual world through basic building blocks, such as cubes, spheres, and cones gives human beings a parsimonious understanding of the visual world. Thus, efforts to find primitive-based geometric interpretations of visual data date back to 1970 s studies of visual media. However, due to the difficulty of primitive fitting in the pre-deep learning age, this research approach faded from the main stage and the vision community turned primarily to semantic image understanding. In this paper, we revisit the classical problem of building geometric interpretations of images, using supervised deep learning tools. We build a framework to detect primitives from images in a layered manner by modifying the YOLO network an RNN with a novel loss function is then used to equip this network with the capability to predict primitives with a variable number of parameters. We compare our pipeline to traditional and other baseline learning methods, demonstrating that our layered detection model has higher accuracy and performs better reconstruction. 展开更多
关键词 LAYERED image DECOMPOSITION PRIMITIVE DETECTION biologically inspired VISION DEEP learning
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