| Literature DB >> 30824795 |
Evangeline Corcoran1, Simon Denman2, Jon Hanger3, Bree Wilson3, Grant Hamilton4.
Abstract
Effective wildlife management relies on the accurate and precise detection of individual animals. These can be challenging data to collect for many cryptic species, particularly those that live in complex structural environments. This study introduces a new automated method for detection using published object detection algorithms to detect their heat signatures in RPAS-derived thermal imaging. As an initial case study we used this new approach to detect koalas (Phascolarctus cinereus), and validated the approach using ground surveys of tracked radio-collared koalas in Petrie, Queensland. The automated method yielded a higher probability of detection (68-100%), higher precision (43-71%), lower root mean square error (RMSE), and lower mean absolute error (MAE) than manual assessment of the RPAS-derived thermal imagery in a comparable amount of time. This new approach allows for more reliable, less invasive detection of koalas in their natural habitat. This new detection methodology has great potential to inform and improve management decisions for threatened species, and other difficult to survey species.Entities:
Year: 2019 PMID: 30824795 PMCID: PMC6397288 DOI: 10.1038/s41598-019-39917-5
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Flowchart of the koala detection pipeline. An input video was processed by DCNN detectors (Faster RCNN and YOLO), and these frames were aligned to a common coordinate frame through registration. The outputs of both methods were combined with previous detection results, and areas that record detections consistently over a number of frames were detected as koalas.
Figure 2Example detection maps for a single image, and the combined results. (A) Input image, (B) Heat map for the F-RCNN, (C) Heat map for YOLO detectors, (D) the previous accumulator image, (E) updated accumulator incorporating the new heat map, and (F) the detected koala in the original image.
Time and weather conditions for RPAS surveys conducted at Petrie North and South sites.
| Survey Site and Number | Survey Type | Date | Time | Ambient Temperature (°C) | Wind Speed (kilometre/hour) |
|---|---|---|---|---|---|
| North 1 | Training | 27/02/2018 | 5:25AM | 21.7 | 17 |
| North 2 | Training | 22/05/2018 | 5:58AM | 14.2 | 13 |
| North 3 | Training | 12/06/2018 | 5:47AM | 10.0 | 12 |
| North 4 | Testing | 10/07/2018 | 6:15AM | 9.4 | 14 |
| North 5 | Testing | 24/07/2018 | 5:52AM | 9.0 | 11 |
| North 6 | Testing | 07/08/2018 | 6:14AM | 15.4 | 11 |
| South 1 | Training | 23/05/2018 | 5:49AM | 14.3 | 13 |
| South 2 | Training | 13/06/2018 | 6:00AM | 11.2 | 14 |
| South 3 | Testing | 11/07/2018 | 5:51AM | 10.1 | 12 |
| South 4 | Testing | 25/07/2018 | 5:41AM | 10.8 | 6 |
| South 5 | Testing | 08/08/2018 | 5:34AM | 8.0 | 13 |
Figure 3Objects automatically detected in RPAS-derived thermal imaging: (A) Candidate koala signature, (B) Kangaroo, (C) Car, (D) Human.
Probability of detection and precision rate for ground-surveyed koalas in RPAS-derived thermal imaging from north and south sites at Petrie, QLD by automated and manual methods.
| Survey Site and Number | Koalas Detected by Survey Method | ||||||
|---|---|---|---|---|---|---|---|
| Ground Survey Count | Automated | Manual | |||||
| Count | Probability of Detection (%) | Precision Rate (%) | Count | Probability of Detection % | Precision Rate (%) | ||
| North 1* | 19 | 13 | 68 | 48 | 9 | 47 | 29 |
| North 2* | 20 | 15 | 75 | 54 | 11 | 55 | 50 |
| North 3* | 20 | 20 | 100 | 69 | 11 | 55 | 37 |
| North 4 | 15 | 14 | 93 | 71 | 10 | 67 | 17 |
| North 5 | 18 | 17 | 94 | 69 | 13 | 72 | 29 |
| North 6 | 19 | 15 | 79 | 60 | 12 | 63 | 50 |
| South 1* | 5 | 5 | 100 | 47 | 2 | 40 | 29 |
| South 2* | 11 | 11 | 100 | 52 | 6 | 55 | 54 |
| South 3 | 9 | 7 | 78 | 58 | 5 | 56 | 35 |
| South 4 | 11 | 9 | 82 | 45 | 6 | 55 | 50 |
| South 5 | 6 | 6 | 100 | 43 | 3 | 50 | 18 |
*Dataset included in training.
Objects falsely identified as koalas in RPAS-derived thermal imagery using automated and manual methods.
| Object Detected | Automated Method | Manual Method |
|---|---|---|
| Kangaroo | 21 (29%) | 0 (0%) |
| Car | 9 (12%) | 0 (0%) |
| Human | 3 (4%) | 0 (0%) |
| Other | 40 (55%) | 51 (100.0%) |
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