Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme

X-ray imaging machines are widely used in border control checkpoints or public transportation, for luggage scanning and inspection. Recent advances in deep learning enabled automatic object detection of X-ray imaging results to largely reduce labor costs. Compared to tasks on natural images, object...

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Main Authors: Nguyen, Hong Duc, Cai, Rizhao, Zhao, Heng, Kot, Alex Chichung, Wen, Bihan
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2022
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Online Access:https://hdl.handle.net/10356/160540
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1605402022-07-26T07:14:31Z Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme Nguyen, Hong Duc Cai, Rizhao Zhao, Heng Kot, Alex Chichung Wen, Bihan School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering X-Ray Imaging Objective Detection X-ray imaging machines are widely used in border control checkpoints or public transportation, for luggage scanning and inspection. Recent advances in deep learning enabled automatic object detection of X-ray imaging results to largely reduce labor costs. Compared to tasks on natural images, object detection for X-ray inspection are typically more challenging, due to the varied sizes and aspect ratios of X-ray images, random locations of the small target objects within the redundant background region, etc. In practice, we show that directly applying off-the-shelf deep learning-based detection algorithms for X-ray imagery can be highly time-consuming and ineffective. To this end, we propose a Task-Driven Cropping scheme, dubbed TDC, for improving the deep image detection algorithms towards efficient and effective luggage inspection via X-ray images. Instead of processing the whole X-ray images for object detection, we propose a two-stage strategy, which first adaptively crops X-ray images and only preserves the task-related regions, i.e., the luggage regions for security inspection. A task-specific deep feature extractor is used to rapidly identify the importance of each X-ray image pixel. Only the regions that are useful and related to the detection tasks are kept and passed to the follow-up deep detector. The varied-scale X-ray images are thus reduced to the same size and aspect ratio, which enables a more efficient deep detection pipeline. Besides, to benchmark the effectiveness of X-ray image detection algorithms, we propose a novel dataset for X-ray image detection, dubbed SIXray-D, based on the popular SIXray dataset. In SIXray-D, we provide the complete and more accurate annotations of both object classes and bounding boxes, which enables model training for supervised X-ray detection methods. Our results show that our proposed TDC algorithm can effectively boost popular detection algorithms, by achieving better detection mAPs or reducing the run time. Published version 2022-07-26T07:14:30Z 2022-07-26T07:14:30Z 2022 Journal Article Nguyen, H. D., Cai, R., Zhao, H., Kot, A. C. & Wen, B. (2022). Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme. Micromachines, 13(4), 565-. https://dx.doi.org/10.3390/mi13040565 2072-666X https://hdl.handle.net/10356/160540 10.3390/mi13040565 35457869 2-s2.0-85128338219 4 13 565 en Micromachines © 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
X-Ray Imaging
Objective Detection
spellingShingle Engineering::Electrical and electronic engineering
X-Ray Imaging
Objective Detection
Nguyen, Hong Duc
Cai, Rizhao
Zhao, Heng
Kot, Alex Chichung
Wen, Bihan
Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
description X-ray imaging machines are widely used in border control checkpoints or public transportation, for luggage scanning and inspection. Recent advances in deep learning enabled automatic object detection of X-ray imaging results to largely reduce labor costs. Compared to tasks on natural images, object detection for X-ray inspection are typically more challenging, due to the varied sizes and aspect ratios of X-ray images, random locations of the small target objects within the redundant background region, etc. In practice, we show that directly applying off-the-shelf deep learning-based detection algorithms for X-ray imagery can be highly time-consuming and ineffective. To this end, we propose a Task-Driven Cropping scheme, dubbed TDC, for improving the deep image detection algorithms towards efficient and effective luggage inspection via X-ray images. Instead of processing the whole X-ray images for object detection, we propose a two-stage strategy, which first adaptively crops X-ray images and only preserves the task-related regions, i.e., the luggage regions for security inspection. A task-specific deep feature extractor is used to rapidly identify the importance of each X-ray image pixel. Only the regions that are useful and related to the detection tasks are kept and passed to the follow-up deep detector. The varied-scale X-ray images are thus reduced to the same size and aspect ratio, which enables a more efficient deep detection pipeline. Besides, to benchmark the effectiveness of X-ray image detection algorithms, we propose a novel dataset for X-ray image detection, dubbed SIXray-D, based on the popular SIXray dataset. In SIXray-D, we provide the complete and more accurate annotations of both object classes and bounding boxes, which enables model training for supervised X-ray detection methods. Our results show that our proposed TDC algorithm can effectively boost popular detection algorithms, by achieving better detection mAPs or reducing the run time.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Nguyen, Hong Duc
Cai, Rizhao
Zhao, Heng
Kot, Alex Chichung
Wen, Bihan
format Article
author Nguyen, Hong Duc
Cai, Rizhao
Zhao, Heng
Kot, Alex Chichung
Wen, Bihan
author_sort Nguyen, Hong Duc
title Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
title_short Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
title_full Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
title_fullStr Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
title_full_unstemmed Towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
title_sort towards more efficient security inspection via deep learning: a task-driven x-ray image cropping scheme
publishDate 2022
url https://hdl.handle.net/10356/160540
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