AI Article Synopsis

  • Recent advancements in deep learning have been applied to detect mesh saliency, but a significant challenge is obtaining extensive vertex-level annotations for training.
  • The proposed solution is a weakly supervised neural network called Classification-for-Saliency CNN (CfS-CNN), which trains without needing detailed saliency data, only using mesh class membership.
  • This network improves upon existing methods through a unique two-channel design that merges classification and saliency features, demonstrating superior performance and offering practical applications in scene saliency detection.

Article Abstract

Recently, effort has been made to apply deep learning to the detection of mesh saliency. However, one major barrier is to collect a large amount of vertex-level annotation as saliency ground truth for training the neural networks. Quite a few pilot studies showed that this task is difficult. In this work, we solve this problem by developing a novel network trained in a weakly supervised manner. The training is end-to-end and does not require any saliency ground truth but only the class membership of meshes. Our Classification-for-Saliency CNN (CfS-CNN) employs a multi-view setup and contains a newly designed two-channel structure which integrates view-based features of both classification and saliency. It essentially transfers knowledge from 3D object classification to mesh saliency. Our approach significantly outperforms the existing state-of-the-art methods according to extensive experimental results. Also, the CfS-CNN can be directly used for scene saliency. We showcase two novel applications based on scene saliency to demonstrate its utility.

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Source
http://dx.doi.org/10.1109/TVCG.2019.2928794DOI Listing

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