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Papers/One-Shot Segmentation in Clutter

One-Shot Segmentation in Clutter

Claudio Michaelis, Matthias Bethge, Alexander S. Ecker

2018-03-26ICML 2018 7One-Shot SegmentationForeground SegmentationSegmentationobject-detection
PaperPDFCode(official)

Abstract

We tackle the problem of one-shot segmentation: finding and segmenting a previously unseen object in a cluttered scene based on a single instruction example. We propose a novel dataset, which we call $\textit{cluttered Omniglot}$. Using a baseline architecture combining a Siamese embedding for detection with a U-net for segmentation we show that increasing levels of clutter make the task progressively harder. Using oracle models with access to various amounts of ground-truth information, we evaluate different aspects of the problem and show that in this kind of visual search task, detection and segmentation are two intertwined problems, the solution to each of which helps solving the other. We therefore introduce $\textit{MaskNet}$, an improved model that attends to multiple candidate locations, generates segmentation proposals to mask out background clutter and selects among the segmented objects. Our findings suggest that such image recognition models based on an iterative refinement of object detection and foreground segmentation may provide a way to deal with highly cluttered scenes.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCluttered OmniglotIoU [256 distractors]43.7MaskNet
Semantic SegmentationCluttered OmniglotIoU [32 distractors]65.6MaskNet
Semantic SegmentationCluttered OmniglotIoU [4 distractors]95.8MaskNet
Semantic SegmentationCluttered OmniglotIoU [256 distractors]38.4Siamese-U-Net
Semantic SegmentationCluttered OmniglotIoU [32 distractors]62.4Siamese-U-Net
Semantic SegmentationCluttered OmniglotIoU [4 distractors]97.1Siamese-U-Net
10-shot image generationCluttered OmniglotIoU [256 distractors]43.7MaskNet
10-shot image generationCluttered OmniglotIoU [32 distractors]65.6MaskNet
10-shot image generationCluttered OmniglotIoU [4 distractors]95.8MaskNet
10-shot image generationCluttered OmniglotIoU [256 distractors]38.4Siamese-U-Net
10-shot image generationCluttered OmniglotIoU [32 distractors]62.4Siamese-U-Net
10-shot image generationCluttered OmniglotIoU [4 distractors]97.1Siamese-U-Net
One-Shot SegmentationCluttered OmniglotIoU [256 distractors]43.7MaskNet
One-Shot SegmentationCluttered OmniglotIoU [32 distractors]65.6MaskNet
One-Shot SegmentationCluttered OmniglotIoU [4 distractors]95.8MaskNet
One-Shot SegmentationCluttered OmniglotIoU [256 distractors]38.4Siamese-U-Net
One-Shot SegmentationCluttered OmniglotIoU [32 distractors]62.4Siamese-U-Net
One-Shot SegmentationCluttered OmniglotIoU [4 distractors]97.1Siamese-U-Net

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