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3 months ago

Actor and Action Modular Network for Text-based Video Segmentation

Jianhua Yang Yan Huang Kai Niu Linjiang Huang Zhanyu Ma Liang Wang

Actor and Action Modular Network for Text-based Video Segmentation

Abstract

Text-based video segmentation aims to segment an actor in video sequences by specifying the actor and its performing action with a textual query. Previous methods fail to explicitly align the video content with the textual query in a fine-grained manner according to the actor and its action, due to the problem of \emph{semantic asymmetry}. The \emph{semantic asymmetry} implies that two modalities contain different amounts of semantic information during the multi-modal fusion process. To alleviate this problem, we propose a novel actor and action modular network that individually localizes the actor and its action in two separate modules. Specifically, we first learn the actor-/action-related content from the video and textual query, and then match them in a symmetrical manner to localize the target tube. The target tube contains the desired actor and action which is then fed into a fully convolutional network to predict segmentation masks of the actor. Our method also establishes the association of objects cross multiple frames with the proposed temporal proposal aggregation mechanism. This enables our method to segment the video effectively and keep the temporal consistency of predictions. The whole model is allowed for joint learning of the actor-action matching and segmentation, as well as achieves the state-of-the-art performance for both single-frame segmentation and full video segmentation on A2D Sentences and J-HMDB Sentences datasets.

Benchmarks

BenchmarkMethodologyMetrics
referring-expression-segmentation-on-a2dAAMN
AP: 0.396
IoU mean: 0.552
IoU overall: 0.617
Precision@0.5: 0.681
Precision@0.6: 0.629
Precision@0.7: 0.523
Precision@0.8: 0.296
Precision@0.9: 0.029
referring-expression-segmentation-on-j-hmdbAAMN
AP: 0.321
IoU mean: 0.576
IoU overall: 0.583
Precision@0.5: 0.773
Precision@0.6: 0.627
Precision@0.7: 0.360
Precision@0.8: 0.044
Precision@0.9: 0.000

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