faster r-cnn (MathWorks Inc)
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1) Product Images from "Evaluation of Automated Object-Detection Algorithms for Koala Detection in Infrared Aerial Imagery"
Article Title: Evaluation of Automated Object-Detection Algorithms for Koala Detection in Infrared Aerial Imagery
Journal: Sensors (Basel, Switzerland)
doi: 10.3390/s24217048
Figure Legend Snippet: Parameter settings of different methods.
Techniques Used:
Figure Legend Snippet: Evaluation curves for 11 comparative koala detection techniques (AAGD, IAAGD, HB-MLCM, ILCM, MLCM, MPCM, TMBM, Faster R-CNN, YOLOv2, Combined 2DCNN, and the MOBIVLS): ( a 1 – d 1 ) show the receiver operating characteristic ( R O C ) curves (TPR vs. FPR); ( a 2 – d 2 ) show the recall vs. (1-precision) curves; and ( a 3 – d 3 ) show the A U R O C and E E R percentages. The F P R range over which the A U R O C calculations were computed was (0– 10 − 4 ), while T P R range used was (0–1). The uppermost three rows of Figures show the results from datasets A–C, respectively, with the last row showing the overall (average) results. In all cases, the proposed MOBIVLS algorithm outperformed all of the other approaches tested.
Techniques Used:
Figure Legend Snippet: The overall results of the three datasets, which were computed by treating the datasets as a single entity. Several performance metrics were computed for different object-detection techniques at (a) F P R of 10 − 6 and (b) 10 − 5 . The total number of unique koalas was 56. The best result of each metric is highlighted by an underline and bold style. The second-best result is indicated by bold style only. The proposed MOBIVLS algorithm performed better than all of the other techniques against all of the metrics used. The column ‘Time’ represents the processing time in seconds per frame.
Techniques Used:
Figure Legend Snippet: Results from Dataset A of several performance metrics for different object-detection techniques at (a) F P R of 10 − 6 and (b) 10 − 5 . The total number of unique koalas was 25. The best result of each metric is highlighted by an underline and bold style. The second-best result is written in bold style only. The proposed MOBIVLS algorithm performed better than all of the other techniques against all of the metrics used.
Techniques Used:
Figure Legend Snippet: Results from Dataset B of several performance metrics for different object-detection techniques at (a) F P R of 10 − 6 and (b) 10 − 5 . The total number of unique koalas was 25. The best result of each metric is highlighted by an underline and bold style. The second-best result is written in bold style only. The proposed MOBIVLS algorithm performed better than all of the other techniques against all of the metrics used.
Techniques Used:
Figure Legend Snippet: Results from Dataset C of several performance metrics for different object-detection techniques at (a) F P R of 10 − 6 and (b) 10 − 5 . The total number of unique koalas was 6. The best result of each metric is highlighted by an underline and bold style. The second-best result is written in bold style only. The proposed MOBIVLS algorithm performed better than all of the other techniques against all of the metrics used.
Techniques Used:

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