Self-supervised Robust Object Detectors from Partially Labelled datasets

05/23/2020
by   Mahdieh Abbasi, et al.
0

In the object detection task, merging various datasets from similar contexts but with different sets of Objects of Interest (OoI) is an inexpensive way (in terms of labor cost) for crafting a large-scale dataset covering a wide range of objects. Moreover, merging datasets allows us to train one integrated object detector, instead of training several ones, which in turn resulting in the reduction of computational and time costs. However, merging the datasets from similar contexts causes samples with partial labeling as each constituent dataset is originally annotated for its own set of OoI and ignores to annotate those objects that are become interested after merging the datasets. With the goal of training one integrated robust object detector with high generalization performance, we propose a training framework to overcome missing-label challenge of the merged datasets. More specifically, we propose a computationally efficient self-supervised framework to create on-the-fly pseudo-labels for the unlabelled positive instances in the merged dataset in order to train the object detector jointly on both ground truth and pseudo labels. We evaluate our proposed framework for training Yolo on a simulated merged dataset with missing rate ≈48% using VOC2012 and VOC2007. We empirically show that generalization performance of Yolo trained on both ground truth and the pseudo-labels created by our method is on average 4% higher than the ones trained only with the ground truth labels of the merged dataset.

READ FULL TEXT

page 1

page 3

research
04/13/2021

Self-supervised object detection from audio-visual correspondence

We tackle the problem of learning object detectors without supervision. ...
research
12/16/2020

Self-Supervised Person Detection in 2D Range Data using a Calibrated Camera

Deep learning is the essential building block of state-of-the-art person...
research
08/15/2020

Object Detection with a Unified Label Space from Multiple Datasets

Given multiple datasets with different label spaces, the goal of this wo...
research
02/21/2023

Self-improving object detection via disagreement reconciliation

Object detectors often experience a drop in performance when new environ...
research
02/07/2023

Look around and learn: self-improving object detection by exploration

Object detectors often experience a drop in performance when new environ...
research
12/01/2020

Unsupervised Part Discovery via Feature Alignment

Understanding objects in terms of their individual parts is important, b...
research
11/30/2022

FuRPE: Learning Full-body Reconstruction from Part Experts

Full-body reconstruction is a fundamental but challenging task. Owing to...

Please sign up or login with your details

Forgot password? Click here to reset