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首页> 外文期刊>Neural computing & applications >DKD–DAD: a novel framework with discriminative kinematic descriptor and deep attention-pooled descriptor for action recognition
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DKD–DAD: a novel framework with discriminative kinematic descriptor and deep attention-pooled descriptor for action recognition

机译:DKD-DAD:一种新颖的框架,具有鉴别性运动描述符和用于行动识别的深度关注描述符

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摘要

In order to improve action recognition accuracy, the discriminative kinematic descriptor and deep attention-pooled descriptor are proposed. Firstly, the optical flow field is transformed into a set of kinematic fields with more discriminativeness. Subsequently, two kinematic features are constructed, which more accurately depict the dynamic characteristics of action subject from the multi-order divergence and curl fields. Secondly, by introducing both of the tight-loose constraint and anti-confusion constraint, a discriminative fusion method is proposed, which guarantees better within-class compactness and between-class separability, meanwhile reduces the confusion caused by outliers. Furthermore, a discriminative kinematic descriptor is constructed. Thirdly, a prediction-attentional pooling method is proposed, which accurately focuses its attention on the discriminative local regions. On this basis, a deep attention-pooled descriptor (DKD–DAD) is constructed. Finally, a novel framework with discriminative kinematic descriptor and deep attention-pooled descriptor is presented, which comprehensively obtains the discriminative dynamic and static information in a video. Consequently, accuracies are improved. Experiments on two challenging datasets verify the effectiveness of our methods.
机译:为了提高动作识别准确性,提出了鉴别的运动学描述符和深受关注的描述符。首先,光学流场与具有更多辨别性的判别变换成一组运动场。随后,构建了两个运动特征,其更准确地描绘了来自多阶发散和卷曲场的动作对象的动态特征。其次,通过引入两个紧张的限制和防困难约束,提出了一种辨别融合方法,这可以保证在课堂内紧凑性和级别之间的可分离性,同时减少了异常值引起的混乱。此外,构建了鉴别的运动学描述符。第三,提出了一种预测注意力汇总方法,该方法精确地将其关注对鉴别的局部区域。在此基础上,构建了深度关注的描述符(DKD-DAD)。最后,提出了一种具有鉴别的运动描述符和深受关注汇总描述符的新颖框架,其全面地获得了视频中的判别动态和静态信息。因此,提高了准确性。两个具有挑战性数据集的实验验证了我们方法的有效性。

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