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A Multi-Level Approach to Waste Object Segmentation

Tao Wang, Yuanzheng Cai, Lingyu Liang, Dongyi Ye

2020Sensors71 citationsDOIOpen Access PDF

Abstract

We address the problem of localizing waste objects from a color image and an optional depth image, which is a key perception component for robotic interaction with such objects. Specifically, our method integrates the intensity and depth information at multiple levels of spatial granularity. Firstly, a scene-level deep network produces an initial coarse segmentation, based on which we select a few potential object regions to zoom in and perform fine segmentation. The results of the above steps are further integrated into a densely connected conditional random field that learns to respect the appearance, depth, and spatial affinities with pixel-level accuracy. In addition, we create a new RGBD waste object segmentation dataset, MJU-Waste, that is made public to facilitate future research in this area. The efficacy of our method is validated on both MJU-Waste and the Trash Annotation in Context (TACO) dataset.

Topics & Concepts

Conditional random fieldArtificial intelligenceSegmentationComputer visionObject (grammar)Computer scienceContext (archaeology)Component (thermodynamics)Image segmentationZoomField (mathematics)Key (lock)Spatial contextual awarenessAnnotationSpatial analysisObject detectionPerceptionPattern recognition (psychology)Scale-space segmentationImage (mathematics)Feature (linguistics)PoseCognitive neuroscience of visual object recognitionSegmentation-based object categorizationObject-oriented programmingAdvanced Neural Network ApplicationsRobotics and Sensor-Based LocalizationRobot Manipulation and Learning
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