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Papers/Learning Generative Vision Transformer with Energy-Based L...

Learning Generative Vision Transformer with Energy-Based Latent Space for Saliency Prediction

Jing Zhang, Jianwen Xie, Nick Barnes, Ping Li

2021-12-27NeurIPS 2021 12Thermal Image SegmentationSaliency PredictionSalient Object DetectionRGB-D Salient Object Detectionobject-detectionObject Detection
PaperPDF

Abstract

Vision transformer networks have shown superiority in many computer vision tasks. In this paper, we take a step further by proposing a novel generative vision transformer with latent variables following an informative energy-based prior for salient object detection. Both the vision transformer network and the energy-based prior model are jointly trained via Markov chain Monte Carlo-based maximum likelihood estimation, in which the sampling from the intractable posterior and prior distributions of the latent variables are performed by Langevin dynamics. Further, with the generative vision transformer, we can easily obtain a pixel-wise uncertainty map from an image, which indicates the model confidence in predicting saliency from the image. Different from the existing generative models which define the prior distribution of the latent variables as a simple isotropic Gaussian distribution, our model uses an energy-based informative prior which can be more expressive to capture the latent space of the data. We apply the proposed framework to both RGB and RGB-D salient object detection tasks. Extensive experimental results show that our framework can achieve not only accurate saliency predictions but also meaningful uncertainty maps that are consistent with the human perception.

Results

TaskDatasetMetricValueModel
Semantic SegmentationRGB-T-Glass-SegmentationMAE0.04EBS
Scene SegmentationRGB-T-Glass-SegmentationMAE0.04EBS
2D Object DetectionRGB-T-Glass-SegmentationMAE0.04EBS
10-shot image generationRGB-T-Glass-SegmentationMAE0.04EBS

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