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Papers/MOVE: Unsupervised Movable Object Segmentation and Detection

MOVE: Unsupervised Movable Object Segmentation and Detection

Adam Bielski, Paolo Favaro

2022-10-14Unsupervised Saliency DetectionClass-agnostic Object DetectionSegmentationSemantic SegmentationObject DiscoverySingle-object discoverySalient Object Detectionobject-detectionObject Detection
PaperPDFCode(official)

Abstract

We introduce MOVE, a novel method to segment objects without any form of supervision. MOVE exploits the fact that foreground objects can be shifted locally relative to their initial position and result in realistic (undistorted) new images. This property allows us to train a segmentation model on a dataset of images without annotation and to achieve state of the art (SotA) performance on several evaluation datasets for unsupervised salient object detection and segmentation. In unsupervised single object discovery, MOVE gives an average CorLoc improvement of 7.2% over the SotA, and in unsupervised class-agnostic object detection it gives a relative AP improvement of 53% on average. Our approach is built on top of self-supervised features (e.g. from DINO or MAE), an inpainting network (based on the Masked AutoEncoder) and adversarial training.

Results

TaskDatasetMetricValueModel
Saliency DetectionECSSDAccuracy95.6MOVE
Saliency DetectionECSSDIoU83.6MOVE
Saliency DetectionECSSDmaximal F-measure92.1MOVE
Saliency DetectionDUT-OMRONAccuracy93.7MOVE
Saliency DetectionDUT-OMRONIoU66.6MOVE
Saliency DetectionDUT-OMRONmaximal F-measure76.6MOVE
Saliency DetectionDUTSAccuracy95.4MOVE
Saliency DetectionDUTSIoU72.8MOVE
Saliency DetectionDUTSmaximal F-measure82.9MOVE
Single-object discoveryCOCO_20kCorLoc71.9MOVE + CAD
Single-object discoveryCOCO_20kCorLoc66.6MOVE

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