Faster Bounding Box Annotation for Object Detection in Indoor Scenes

07/03/2018
by   Bishwo Adhikari, et al.
0

This paper proposes an approach for rapid bounding box annotation for object detection datasets. The procedure consists of two stages: The first step is to annotate a part of the dataset manually, and the second step proposes annotations for the remaining samples using a model trained with the first stage annotations. We experimentally study which first/second stage split minimizes to total workload. In addition, we introduce a new fully labeled object detection dataset collected from indoor scenes. Compared to other indoor datasets, our collection has more class categories, different backgrounds, lighting conditions, occlusion and high intra-class differences. We train deep learning based object detectors with a number of state-of-the-art models and compare them in terms of speed and accuracy. The fully annotated dataset is released freely available for the research community.

READ FULL TEXT

page 1

page 2

research
03/03/2020

Towards Noise-resistant Object Detection with Noisy Annotations

Training deep object detectors requires significant amount of human-anno...
research
10/03/2019

360-Indoor: Towards Learning Real-World Objects in 360° Indoor Equirectangular Images

While there are several widely used object detection datasets, current c...
research
05/25/2019

Efficient Object Annotation via Speaking and Pointing

Deep neural networks deliver state-of-the-art visual recognition, but th...
research
03/24/2021

TagMe: GPS-Assisted Automatic Object Annotation in Videos

Training high-accuracy object detection models requires large and divers...
research
05/27/2021

PSRR-MaxpoolNMS: Pyramid Shifted MaxpoolNMS with Relationship Recovery

Non-maximum Suppression (NMS) is an essential postprocessing step in mod...
research
10/01/2018

One-Click Annotation with Guided Hierarchical Object Detection

The increase in data collection has made data annotation an interesting ...
research
09/11/2023

CitDet: A Benchmark Dataset for Citrus Fruit Detection

In this letter, we present a new dataset to advance the state of the art...

Please sign up or login with your details

Forgot password? Click here to reset