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Semantic Object Segmentation in Cultural Sites using Real and Synthetic Data

机译:使用真实和合成数据的文化站点中的语义对象分割

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We consider the problem of object segmentation in cultural sites. Since collecting and labeling large datasets of real images is challenging, we investigate whether the use of synthetic images can be useful to achieve good segmentation performance on real data. To perform the study, we collected a new dataset comprising both real and synthetic images of 24 artworks in a cultural site. The synthetic images have been automatically generated from the 3D model of the considered cultural site using a tool developed for that purpose. Real and synthetic images have been labeled for the task of semantic segmentation of artworks. We compare three different approaches to perform object segmentation exploiting real and synthetic data. The experimental results point out that the use of synthetic data helps to improve the performances of segmentation algorithms when tested on real images. Satisfactory performance is achieved exploiting semantic segmentation together with image-to-image translation and including a small amount of real data during training. To encourage research on the topic, we publicly release the proposed dataset at the following url:https://iplab.dmi.unict.it/EGO-CH-OBJ-SEG/.
机译:我们认为文化遗产中对象细分的问题。由于收集和标记的实图像的大型数据集是具有挑战性的,因此我们研究了合成图像的使用是否有用,无法在实际数据上实现良好的分段性能。为了执行研究,我们收集了一个新的数据集,包括在文化遗址中的24件艺术品的真实和合成图像。使用为此目的开发的工具,已从所考虑的文化站点的3D模型自动生成合成图像。真实的和合成图像已被标记为艺术品的语义分割任务。我们比较三种不同的方法来执行利用实际和合成数据的对象分段。实验结果指出,在实际图像上测试时,合成数据的使用有助于改善分割算法的性能。令人满意的性能是利用图像到图像转换和在训练期间的少量真实数据的性能进行令人满意的性能。为了鼓励对主题的研究,我们在以下URL上公开发布所提出的数据集:https://iplab.dmi.unict.it/ego-ch-obj-seg/。

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