Litcius/Paper detail

Learning the Superpixel in a Non-iterative and Lifelong Manner

Lei Zhu, Qi She, Bin Zhang, Yanye Lu, Zhilin Lu, Duo Li, Jie Hu

202136 citationsDOI

Abstract

Superpixel is generated by automatically clustering pixels in an image into hundreds of compact partitions, which is widely used to perceive the object contours for its excel-lent contour adherence. Although some works use the Convolution Neural Network (CNN) to generate high-quality superpixel, we challenge the design principles of these net-works, specifically for their dependence on manual labels and excess computation resources, which limits their flexibility compared with the traditional unsupervised segmentation methods. We target at redefining the CNN-based superpixel segmentation as a lifelong clustering task and pro-pose an unsupervised CNN-based method called LNS-Net. The LNS-Net can learn superpixel in a non-iterative and lifelong manner without any manual labels. Specifically, a lightweight feature embedder is proposed for LNS-Net to efficiently generate the cluster-friendly features. With those features, seed nodes can be automatically assigned to cluster pixels in a non-iterative way. Additionally, our LNS-Net can adapt the sequentially lifelong learning by rescaling the gradient of weight based on both channel and spatial context to avoid overfitting. Experiments show that the proposed LNS-Net achieves significantly better performance on three benchmarks with nearly ten times lower complexity compared with other state-of-the-art methods.

Topics & Concepts

Computer scienceArtificial intelligenceCluster analysisSegmentationOverfittingPixelContext (archaeology)Pattern recognition (psychology)Feature (linguistics)Image segmentationConvolutional neural networkConvolution (computer science)Artificial neural networkComputer visionLinguisticsPhilosophyPaleontologyBiologyMedical Image Segmentation TechniquesAdvanced Neural Network ApplicationsAdvanced Image Fusion Techniques