Improving Pixel Embedding Learning through Intermediate Distance
Regression Supervision for Instance Segmentation
- URL: http://arxiv.org/abs/2007.06660v1
- Date: Mon, 13 Jul 2020 20:03:30 GMT
- Title: Improving Pixel Embedding Learning through Intermediate Distance
Regression Supervision for Instance Segmentation
- Authors: Yuli Wu, Long Chen, Dorit Merhof
- Abstract summary: We propose a simple, yet highly effective, architecture for object-aware embedding learning.
A distance regression module is incorporated into our architecture to generate seeds for fast clustering.
We show that the features learned by the distance regression module are able to promote the accuracy of learned object-aware embeddings significantly.
- Score: 8.870513218826083
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As a proposal-free approach, instance segmentation through pixel embedding
learning and clustering is gaining more emphasis. Compared with bounding box
refinement approaches, such as Mask R-CNN, it has potential advantages in
handling complex shapes and dense objects. In this work, we propose a simple,
yet highly effective, architecture for object-aware embedding learning. A
distance regression module is incorporated into our architecture to generate
seeds for fast clustering. At the same time, we show that the features learned
by the distance regression module are able to promote the accuracy of learned
object-aware embeddings significantly. By simply concatenating features of the
distance regression module to the images as inputs of the embedding module, the
mSBD scores on the CVPPP Leaf Segmentation Challenge can be further improved by
more than 8% compared to the identical set-up without concatenation, yielding
the best overall result amongst the leaderboard at CodaLab.
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