DoUnseen: Zero-Shot Object Detection for Robotic Grasping

04/06/2023
by   Anas Gouda, et al.
0

How can we segment varying numbers of objects where each specific object represents its own separate class? To make the problem even more realistic, how can we add and delete classes on the fly without retraining? This is the case of robotic applications where no datasets of the objects exist or application that includes thousands of objects (E.g., in logistics) where it is impossible to train a single model to learn all of the objects. Most current research on object segmentation for robotic grasping focuses on class-level object segmentation (E.g., box, cup, bottle), closed sets (specific objects of a dataset; for example, YCB dataset), or deep learning-based template matching. In this work, we are interested in open sets where the number of classes is unknown, varying, and without pre-knowledge about the objects' types. We consider each specific object as its own separate class. Our goal is to develop a zero-shot object detector that requires no training and can add any object as a class just by capturing a few images of the object. Our main idea is to break the segmentation pipelines into two steps by combining unseen object segmentation networks cascaded by zero-shot classifiers. We evaluate our zero-shot object detector on unseen datasets and compare it to a trained Mask R-CNN on those datasets. The results show that the performance varies from practical to unsuitable depending on the environment setup and the objects being handled. The code is available in our DoUnseen library repository.

READ FULL TEXT

page 1

page 3

research
09/22/2021

NudgeSeg: Zero-Shot Object Segmentation by Repeated Physical Interaction

Recent advances in object segmentation have demonstrated that deep neura...
research
09/24/2021

ZSD-YOLO: Zero-Shot YOLO Detection using Vision-Language KnowledgeDistillation

Real-world object sampling produces long-tailed distributions requiring ...
research
11/29/2021

3D Compositional Zero-shot Learning with DeCompositional Consensus

Parts represent a basic unit of geometric and semantic similarity across...
research
05/16/2018

Zero-Shot Object Detection by Hybrid Region Embedding

Object detection is considered as one of the most challenging problems i...
research
02/14/2023

Frustratingly Simple but Effective Zero-shot Detection and Segmentation: Analysis and a Strong Baseline

Methods for object detection and segmentation often require abundant ins...
research
08/13/2021

Detection and Captioning with Unseen Object Classes

Image caption generation is one of the most challenging problems at the ...
research
08/26/2023

Zero-Shot Edge Detection with SCESAME: Spectral Clustering-based Ensemble for Segment Anything Model Estimation

This paper proposes a novel zero-shot edge detection with SCESAME, which...

Please sign up or login with your details

Forgot password? Click here to reset