Training Semantic Segmentation on Heterogeneous Datasets
Panagiotis Meletis, Gijs Dubbelman

TL;DR
This paper introduces a unified framework for training semantic segmentation models on multiple heterogeneous datasets simultaneously, enhancing performance, generalization, and semantic concept recognition.
Contribution
It proposes a novel approach to handle conflicting labels and weak annotations in diverse datasets within a single training pipeline for semantic segmentation.
Findings
Improved segmentation metrics on multiple datasets.
Enhanced generalization to unseen datasets.
Extended label space with hundreds of semantic classes.
Abstract
We explore semantic segmentation beyond the conventional, single-dataset homogeneous training and bring forward the problem of Heterogeneous Training of Semantic Segmentation (HTSS). HTSS involves simultaneous training on multiple heterogeneous datasets, i.e. datasets with conflicting label spaces and different (weak) annotation types from the perspective of semantic segmentation. The HTSS formulation exposes deep networks to a larger and previously unexplored aggregation of information that can potentially enhance semantic segmentation in three directions: i) performance: increased segmentation metrics on seen datasets, ii) generalization: improved segmentation metrics on unseen datasets, and iii) knowledgeability: increased number of recognizable semantic concepts. To research these benefits of HTSS, we propose a unified framework, that incorporates heterogeneous datasets in a…
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Taxonomy
TopicsAdvanced Neural Network Applications · Adversarial Robustness in Machine Learning · Domain Adaptation and Few-Shot Learning
MethodsMax Pooling · Convolution · Fully Convolutional Network
