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Segmentation According to Natural Examples: Learning Static Segmentation from Motion Segmentation

机译:根据自然示例进行细分:从运动细分中学习静态细分

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The Segmentation According to Natural Examples (SANE) algorithm learns to segment objects in static images from video training data. SANE uses background subtraction to find the segmentation of moving objects in videos. This provides object segmentation information for each video frame. The collection of frames and segmentations forms a training set that SANE uses to learn the image and shape properties of the observed motion boundaries. When presented with new static images, the trained model infers segmentations similar to the observed motion segmentations. SANE is a general method for learning environment-specific segmentation models. Because it can automatically generate training data from video, it can adapt to a new environment and new objects with relative ease, an advantage over untrained segmentation methods or those that require human-labeled training data. By using the local shape information in the training data, it outperforms a trained local boundary detector. Its performance is competitive with a trained top-down segmentation algorithm that uses global shape. The shape information it learns from one class of objects can assist the segmentation of other classes.
机译:根据自然实例分割(SANE)算法学习从视频训练数据中分割静态图像中的对象。 SANE使用背景减法找到视频中运动对象的分割。这提供了每个视频帧的对象分割信息。帧和分段的集合形成了训练集,SANE使用该训练集来学习观察到的运动边界的图像和形状属性。当用新的静态图像呈现时,训练后的模型会推断出类似于观察到的运动分割的分割。 SANE是学习特定于环境的细分模型的通用方法。因为它可以从视频自动生成训练数据,所以它可以相对轻松地适应新的环境和新对象,这比未训练的分割方法或需要人工标记的训练数据的方法更具优势。通过在训练数据中使用局部形状信息,其性能优于训练后的局部边界检测器。它的性能与使用全局形状的训练有素的自上而下的分割算法相比具有竞争力。它从一类对象中学到的形状信息可以帮助其他类的分割。

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