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Efficient Video Object Segmentation via Network Modulation

机译:通过网络调制进行有效的视频对象分割

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Video object segmentation targets segmenting a specific object throughout a video sequence when given only an annotated first frame. Recent deep learning based approaches find it effective to fine-tune a general-purpose segmentation model on the annotated frame using hundreds of iterations of gradient descent. Despite the high accuracy that these methods achieve, the fine-tuning process is inefficient and fails to meet the requirements of real world applications. We propose a novel approach that uses a single forward pass to adapt the segmentation model to the appearance of a specific object. Specifically, a second meta neural network named modulator is trained to manipulate the intermediate layers of the segmentation network given limited visual and spatial information of the target object. The experiments show that our approach is 70× faster than fine-tuning approaches and achieves similar accuracy. Our model and code have been released at https://github.com/linjieyangsc/video_seg.
机译:当仅给出带注释的第一帧时,视频对象分割的目标是在整个视频序列中分割特定对象。最近基于深度学习的方法发现使用数百次梯度下降迭代在带注释的帧上微调通用分割模型是有效的。尽管这些方法实现了高精度,但微调过程仍然效率低下,无法满足实际应用的要求。我们提出了一种新颖的方法,该方法使用单个前向通过来使分割模型适应特定对象的外观。具体而言,在目标对象的视觉和空间信息有限的情况下,训练第二个称为调制器的元神经网络来操纵分割网络的中间层。实验表明,我们的方法比微调方法快70倍,并且达到了相似的精度。我们的模型和代码已在https://github.com/linjieyangsc/video_seg上发布。

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