结构与统计纹理知识的提取与学习

IF 18.6
Deyi Ji;Feng Zhao;Hongtao Lu;Feng Wu;Jieping Ye
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引用次数: 0

摘要

低层次纹理特征/知识对于描述局部结构模式和全局统计特性(如边界、平滑度、规律性和颜色对比)也至关重要,而高层次深度特征可能无法很好地解决这些问题。在本文中,我们的目标是在语义分割和相关知识蒸馏任务中重新强调深度网络中的底层纹理信息。为此,我们充分利用结构和统计纹理知识,提出了一种新的结构和统计纹理知识蒸馏(SSTKD)框架进行语义分割。其中,引入Contourlet分解模块(CDM),利用迭代拉普拉斯金字塔和方向滤波器组对底层特征进行分解,挖掘结构纹理知识;设计纹理强度均衡模块(TIEM),利用相应的量化同余损失(QDL)提取和增强统计纹理知识。此外,我们还提出了共生TIEM (C-TIEM)和通用分割框架(stlnet++和U-SSNet),使现有的分割网络能够更有效地获取结构和统计纹理信息。在三个分割任务上的大量实验结果分别证明了所提出方法的有效性及其在七个流行基准数据集上的最新性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural and Statistical Texture Knowledge Distillation and Learning for Segmentation
Low-level texture feature/knowledge is also of vital importance for characterizing the local structural pattern and global statistical properties, such as boundary, smoothness, regularity, and color contrast, which may not be well addressed by high-level deep features. In this paper, we aim to re-emphasize the low-level texture information in deep networks for semantic segmentation and related knowledge distillation tasks. To this end, we take full advantage of both structural and statistical texture knowledge and propose a novel Structural and Statistical Texture Knowledge Distillation (SSTKD) framework for semantic segmentation. Specifically, Contourlet Decomposition Module (CDM) is introduced to decompose the low-level features with iterative Laplacian pyramid and directional filter bank to mine the structural texture knowledge, and Texture Intensity Equalization Module (TIEM) is designed to extract and enhance the statistical texture knowledge with the corresponding Quantization Congruence Loss (QDL). Moreover, we propose the Co-occurrence TIEM (C-TIEM) and generic segmentation frameworks, namely STLNet++ and U-SSNet, to enable existing segmentation networks to harvest the structural and statistical texture information more effectively. Extensive experimental results on three segmentation tasks demonstrate the effectiveness of the proposed methods and their state-of-the-art performance on seven popular benchmark datasets, respectively.
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