基于相似度边界预测的卷积变换动作分割

Dazhao Du, Bing Su, Yu Li, Zhongang Qi, Lingyu Si, Ying Shan
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引用次数: 0

摘要

动作分类已经取得了很大的进展,但从长视频中分割和识别动作仍然是一个具有挑战性的问题。近年来,基于transformer的模型具有较强的序列建模能力,已成功地完成了许多序列建模任务。然而,由于缺乏感应偏置和处理长视频序列的困难,限制了Transformer在动作分割任务中的应用。为了探索Transformer在本任务中的潜力,我们将vanilla Transformer中的一些特定线性层替换为扩展时间卷积,并利用稀疏注意力机制来降低处理长视频序列的时间和空间复杂性。此外,直接使用分帧分类损失训练模型会导致动作边界的帧与动作中间的帧被平等对待,并且学习到的特征对边界不敏感。我们提出了一个新的局部日志上下文注意力模块来预测每一帧是在动作的开始、中间还是结束。由于边界框架与其相邻的不同类别的框架相似,我们基于相似性的边界预测有助于学习更多的判别特征。在三个数据集上的大量实验表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Transformer with Similarity-based Boundary Prediction for Action Segmentation
Action classification has made great progress, but segmenting and recognizing actions from long videos remains a challenging problem. Recently, Transformer-based models with strong sequence modeling ability have succeeded in many se-quence modeling tasks. However, the lack of inductive bias and the difficulty of handling long video sequences limit the application of the Transformer in the action segmentation task. In order to explore the potential of the Transformer in this task, we replace some specific linear layers in the vanilla Transformer with dilated temporal convolution, and a sparse attention mechanism is utilized to reduce the time and space complexities to process long video sequences. Besides, directly using frame-wise classification loss to train the model will cause that frames at boundaries of actions are treated equally with those in the middle of actions, and the learned features are not sensitive to boundaries. We propose a new local log-context attention module to predict whether each frame is at the beginning, middle, or end of an action. Since boundary frames are similar to their neighboring frames of different classes, our similarity-based boundary prediction helps learn more discriminative features. Extensive experiments on three datasets show the effectiveness of our method.
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