4.8 Article

On the Importance of Visual Context for Data Augmentation in Scene Understanding

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2019.2961896

Keywords

Context modeling; Object detection; Image segmentation; Semantics; Training; Visualization; Task analysis; Convolutional neural networks; data augmentation; visual context; object detection; semantic segmentation

Funding

  1. ERC [714381]
  2. ANR [3IA MIAI@GrenobleAlpes]

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Data augmentation is crucial for training visual recognition systems, helping to reduce overfitting and improve generalization by artificially increasing training examples. In tasks such as object detection, semantic and instance segmentation, augmenting training images by blending objects in existing scenes can significantly enhance model performance.
Performing data augmentation for learning deep neural networks is known to be important for training visual recognition systems. By artificially increasing the number of training examples, it helps reducing overfitting and improves generalization. While simple image transformations can already improve predictive performance in most vision tasks, larger gains can be obtained by leveraging task-specific prior knowledge. In this work, we consider object detection, semantic and instance segmentation and augment the training images by blending objects in existing scenes, using instance segmentation annotations. We observe that randomly pasting objects on images hurts the performance, unless the object is placed in the right context. To resolve this issue, we propose an explicit context model by using a convolutional neural network, which predicts whether an image region is suitable for placing a given object or not. In our experiments, we show that our approach is able to improve object detection, semantic and instance segmentation on the PASCAL VOC12 and COCO datasets, with significant gains in a limited annotation scenario, i.e., when only one category is annotated. We also show that the method is not limited to datasets that come with expensive pixel-wise instance annotations and can be used when only bounding boxes are available, by employing weakly-supervised learning for instance masks approximation.

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