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Papers/Dynamic Prototype Convolution Network for Few-Shot Semanti...

Dynamic Prototype Convolution Network for Few-Shot Semantic Segmentation

Jie Liu, Yanqi Bao, Guo-Sen Xie, Huan Xiong, Jan-Jakob Sonke, Efstratios Gavves

2022-04-22CVPR 2022 1Few-Shot Semantic SegmentationSemantic Segmentation
PaperPDF

Abstract

The key challenge for few-shot semantic segmentation (FSS) is how to tailor a desirable interaction among support and query features and/or their prototypes, under the episodic training scenario. Most existing FSS methods implement such support-query interactions by solely leveraging plain operations - e.g., cosine similarity and feature concatenation - for segmenting the query objects. However, these interaction approaches usually cannot well capture the intrinsic object details in the query images that are widely encountered in FSS, e.g., if the query object to be segmented has holes and slots, inaccurate segmentation almost always happens. To this end, we propose a dynamic prototype convolution network (DPCN) to fully capture the aforementioned intrinsic details for accurate FSS. Specifically, in DPCN, a dynamic convolution module (DCM) is firstly proposed to generate dynamic kernels from support foreground, then information interaction is achieved by convolution operations over query features using these kernels. Moreover, we equip DPCN with a support activation module (SAM) and a feature filtering module (FFM) to generate pseudo mask and filter out background information for the query images, respectively. SAM and FFM together can mine enriched context information from the query features. Our DPCN is also flexible and efficient under the k-shot FSS setting. Extensive experiments on PASCAL-5i and COCO-20i show that DPCN yields superior performances under both 1-shot and 5-shot settings.

Results

TaskDatasetMetricValueModel
Few-Shot LearningPASCAL-5i (1-Shot)Mean IoU66.7DPCN
Few-Shot Semantic SegmentationPASCAL-5i (1-Shot)Mean IoU66.7DPCN
Meta-LearningPASCAL-5i (1-Shot)Mean IoU66.7DPCN

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