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A Benchmark Dataset and Evaluation Methodology for Video Object Segmentation

机译:视频对象分割的基准数据集和评估方法

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Over the years, datasets and benchmarks have proven their fundamental importance in computer vision research, enabling targeted progress and objective comparisons in many fields. At the same time, legacy datasets may impend the evolution of a field due to saturated algorithm performance and the lack of contemporary, high quality data. In this work we present a new benchmark dataset and evaluation methodology for the area of video object segmentation. The dataset, named DAVIS (Densely Annotated VIdeo Segmentation), consists of fifty high quality, Full HD video sequences, spanning multiple occurrences of common video object segmentation challenges such as occlusions, motionblur and appearance changes. Each video is accompanied by densely annotated, pixel-accurate and per-frame ground truth segmentation. In addition, we provide a comprehensive analysis of several state-of-the-art segmentation approaches using three complementary metrics that measure the spatial extent of the segmentation, the accuracy of the silhouette contours and the temporal coherence. The results uncover strengths and weaknesses of current approaches, opening up promising directions for future works.
机译:多年来,数据集和基准已经证明了它们在计算机视觉研究中的根本重要性,从而可以在许多领域进行有针对性的进步和客观比较。同时,由于饱和的算法性能和缺乏现代的高质量数据,传统的数据集可能会阻碍领域的发展。在这项工作中,我们为视频对象细分领域提出了一种新的基准数据集和评估方法。该数据集名为DAVIS(密集注释的VIdeo分割),由五十个高质量的全高清视频序列组成,跨越了常见视频对象分割挑战(如遮挡,运动模糊和外观变化)的多次出现。每个视频都带有密集注释的,像素精确的和每帧的地面真相分割。此外,我们使用三个互补的指标对几种最新的分割方法进行了全面的分析,这些指标可测量分割的空间范围,轮廓轮廓的准确性和时间相干性。结果揭示了当前方法的优缺点,为未来的工作开辟了有希望的方向。

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