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Overscan Detection in Digitized Analog Films by Precise Sprocket Hole Segmentation

机译:通过精确的链轮孔分割在数字化模拟胶片中的过分扫描检测

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Automatic video analysis is explored in order to understand and interpret real-world scenes automatically. For digitized historical analog films, this process is influenced by the video quality, video composition or scan artifacts called overscanning. The main aim of this paper is to find the Sprocket Holes (SH) in digitized analog film frames in order to drop unwanted overscan areas and extract the correct scaled final frame content which includes the most significant frame information. The outcome of this investigation proposes a precise overscan detection pipeline which combines the advantages of supervised segmentation networks such as DeepLabV3 with an unsupervised Gaussian Mixture Model for fine-grained segmentation based on histogram features. Furthermore, this exploration demonstrates the strength of using low-level backbone features in combination with low-cost CNN architectures like SqueezeNet in terms of inference runtime and segmentation performance. Moreover, a pipeline for creating photo-realistic frame samples to build a self-generated dataset is introduced and used in the training and validation phase. This dataset consists of 15000 image-mask pairs including synthetically created and deformed SHs with respect to the exact film reel layout geometry. Finally, the approach is evaluated by using real-world historical film frames including original SHs and deformations such as scratches, cracks or wet splices. The proposed approach reaches a Mean Intersection over Union (mIoU) score of 0.9509 (@threshold: 0.5) as well as a Dice Coefficient of 0.974 (@threshold: 0.5) and outperforms state-of-the-art solutions. Finally, we provide full access to our source code as well as the self-generated dataset in order to promote further research on digitized analog film analysis and fine-grained object segmentation.
机译:探索自动视频分析,以便自动理解和解释现实世界。对于数字化的历史模拟胶片,该过程受到视频质量,视频组成或扫描伪像的影响,称为过扫描。本文的主要目的是在数字化模拟胶片框架中找到链轮孔(SH),以便降低不需要的过扫描区域并提取包含最重要的帧信息的正确缩放最终帧内容。本研究的结果提出了一种精确的过扫描检测管道,其将监督分割网络如Deeplabv3的优点与基于直方图特征的细粒度分段进行无监督的高斯混合模型。此外,该探索演示了使用低级骨架特征与低成本CNN架构的强度,如推断运行时和分段性能等挤压座。此外,用于创建用于构建自生成数据集的照片逼真帧样本的管道在训练和验证阶段中使用。该数据集包含15000个图像掩模对,包括合成创建和变形的SHS,相对于精确的胶卷卷轴布局几何。最后,通过使用具有原始SHS和变形的真实历史胶片框架来评估该方法,例如划痕,裂缝或湿接头。所提出的方法达到联盟(Miou)得分为0.9509(@Threshold:0.5)以及0.974的骰子系数(@Threshold:0.5)和优于最先进的解决方案。最后,我们提供了完全访问我们的源代码以及自我生成的数据集,以便促进数字化模拟胶片分析和细粒度对象分割的进一步研究。

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