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Can super resolution improve human pose estimation in low resolution scenarios?

Can super resolution improve human pose estimation in low resolution scenarios?
Can super resolution improve human pose estimation in low resolution scenarios?
The results obtained from state of the art human pose estimation (HPE) models degrade rapidly when evaluating people of a low resolution, but can super resolution (SR) be used to help mitigate this effect? By using various SR approaches we enhanced two low resolution datasets and evaluated the change in performance of both an object and keypoint detector as well as end-to-end HPE results. We remark the following observations. First we find that for people who were originally depicted at a low resolution (segmentation area in pixels), their keypoint detection performance would improve once SR was applied. Second, the keypoint detection performance gained is dependent on that persons pixel count in the original image prior to any application of SR; keypoint detection performance was improved when SR was applied to people with a small initial segmentation area, but degrades as this becomes larger. To address this we introduced a novel Mask-RCNN approach, utilising a segmentation area threshold to decide when to use SR during the keypoint detection step. This approach achieved the best results on our low resolution datasets for each HPE performance metrics.
Hardy, Peter, Timothy David
361a5d48-51cf-4eaf-9b60-1de78f2f2f20
Dasmahapatra, Srinandan
eb5fd76f-4335-4ae9-a88a-20b9e2b3f698
Kim, Hansung
2c7c135c-f00b-4409-acb2-85b3a9e8225f
Hardy, Peter, Timothy David
361a5d48-51cf-4eaf-9b60-1de78f2f2f20
Dasmahapatra, Srinandan
eb5fd76f-4335-4ae9-a88a-20b9e2b3f698
Kim, Hansung
2c7c135c-f00b-4409-acb2-85b3a9e8225f

Hardy, Peter, Timothy David, Dasmahapatra, Srinandan and Kim, Hansung (2022) Can super resolution improve human pose estimation in low resolution scenarios? 17th International Conference on Computer Vision Theory and Applications, Virtual. 06 - 08 Feb 2022. 14 pp .

Record type: Conference or Workshop Item (Paper)

Abstract

The results obtained from state of the art human pose estimation (HPE) models degrade rapidly when evaluating people of a low resolution, but can super resolution (SR) be used to help mitigate this effect? By using various SR approaches we enhanced two low resolution datasets and evaluated the change in performance of both an object and keypoint detector as well as end-to-end HPE results. We remark the following observations. First we find that for people who were originally depicted at a low resolution (segmentation area in pixels), their keypoint detection performance would improve once SR was applied. Second, the keypoint detection performance gained is dependent on that persons pixel count in the original image prior to any application of SR; keypoint detection performance was improved when SR was applied to people with a small initial segmentation area, but degrades as this becomes larger. To address this we introduced a novel Mask-RCNN approach, utilising a segmentation area threshold to decide when to use SR during the keypoint detection step. This approach achieved the best results on our low resolution datasets for each HPE performance metrics.

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Published date: 6 February 2022
Venue - Dates: 17th International Conference on Computer Vision Theory and Applications, Virtual, 2022-02-06 - 2022-02-08

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Local EPrints ID: 455291
URI: http://eprints.soton.ac.uk/id/eprint/455291
PURE UUID: e141c06c-04c1-4d10-b7c0-e81af079e6a1
ORCID for Hansung Kim: ORCID iD orcid.org/0000-0003-4907-0491

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Date deposited: 16 Mar 2022 18:00
Last modified: 17 Mar 2024 04:01

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Contributors

Author: Peter, Timothy David Hardy
Author: Srinandan Dasmahapatra
Author: Hansung Kim ORCID iD

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