Feature Weighting and Boosting for Few-Shot Segmentation

ICCV 2019  ·  Khoi Nguyen, Sinisa Todorovic ·

This paper is about few-shot segmentation of foreground objects in images. We train a CNN on small subsets of training images, each mimicking the few-shot setting. In each subset, one image serves as the query and the other(s) as support image(s) with ground-truth segmentation. The CNN first extracts feature maps from the query and support images. Then, a class feature vector is computed as an average of the support's feature maps over the known foreground. Finally, the target object is segmented in the query image by using a cosine similarity between the class feature vector and the query's feature map. We make two contributions by: (1) Improving discriminativeness of features so their activations are high on the foreground and low elsewhere; and (2) Boosting inference with an ensemble of experts guided with the gradient of loss incurred when segmenting the support images in testing. Our evaluations on the PASCAL-$5^i$ and COCO-$20^i$ datasets demonstrate that we significantly outperform existing approaches.

PDF Abstract ICCV 2019 PDF ICCV 2019 Abstract
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Few-Shot Semantic Segmentation COCO-20i (1-shot) FWB (VGG-16) Mean IoU 20.02 # 76
Few-Shot Semantic Segmentation COCO-20i (1-shot) FWB (ResNet-101) Mean IoU 21.2 # 74
Few-Shot Semantic Segmentation COCO-20i (5-shot) FWB (ResNet-101) Mean IoU 23.65 # 71
Few-Shot Semantic Segmentation COCO-20i (5-shot) FWB (VGG-16) Mean IoU 22.63 # 72
Few-Shot Semantic Segmentation PASCAL-5i (1-Shot) FWB (VGG-16) Mean IoU 51.9 # 94
Few-Shot Semantic Segmentation PASCAL-5i (1-Shot) FWB (ResNet-101) Mean IoU 56.2 # 90
Few-Shot Semantic Segmentation PASCAL-5i (5-Shot) FWB (VGG-16) Mean IoU 55.1 # 88
Few-Shot Semantic Segmentation PASCAL-5i (5-Shot) FWB (ResNet-101) Mean IoU 59.9 # 80

Methods


No methods listed for this paper. Add relevant methods here