3.8 Proceedings Paper

ENTROPY-BASED FEATURE EXTRACTION FOR REAL-TIME SEMANTIC SEGMENTATION

出版社

IEEE
DOI: 10.1109/ICIP46576.2022.9897398

关键词

Real-time semantic segmentation; deep learning; neural network

资金

  1. Research Foundation-Flanders (FWO) [G093817N]

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This paper presents an efficient Entropy-based Patch Encoder (EPE) module for resource-constrained semantic segmentation, which utilizes different numbers of parameters in encoders based on entropy levels in image patches to boost performance while reducing computational cost.
This paper introduces an efficient patch-based computational module, coined Entropy-based Patch Encoder (EPE) module, for resource-constrained semantic segmentation. The EPE module consists of three lightweight fully-convolutional encoders, each extracting features from image patches with a different amount of entropy. Patches with high entropy are being processed by the encoder with the largest number of parameters, patches with moderate entropy are processed by the encoder with a moderate number of parameters, and patches with low entropy are processed by the smallest encoder. The intuition behind the module is the following: as patches with high entropy contain more information, they need an encoder with more parameters, unlike low entropy patches, which can be processed using a small encoder. Consequently, processing part of the patches via the smaller encoder can significantly reduce the computational cost of the module. Experiments show that EPE can boost the performance of existing real-time semantic segmentation models with a slight increase in the computational cost. Specifically, EPE increases the mIOU performance of DFANet A by 0.9% with only 1.2% increase in the number of parameters and the mIOU performance of EDANet by 1% with 10% increase of the model parameters.

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