2017
DOI: 10.7717/peerj-cs.113
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Species-specific audio detection: a comparison of three template-based detection algorithms using random forests

Abstract: We developed a web-based cloud-hosted system that allow users to archive, listen, visualize, and annotate recordings. The system also provides tools to convert these annotations into datasets that can be used to train a computer to detect the presence or absence of a species. The algorithm used by the system was selected after comparing the accuracy and efficiency of three variants of a template-based detection. The algorithm computes a similarity vector by comparing a template of a species call with time incr… Show more

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Cited by 22 publications
(10 citation statements)
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References 29 publications
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“…Furthermore, from the results, the decision-tree method appears as one of the best classifiers in many temporally-aware methods. This fact is consistent with other studies where non-speech sounds (Pavlopoulos, Stasis & Loukis, 2004), or more specifically, environmental sounds (Bravo, Berríos & Aide, 2017) are considered.…”
Section: Discussionsupporting
confidence: 92%
“…Furthermore, from the results, the decision-tree method appears as one of the best classifiers in many temporally-aware methods. This fact is consistent with other studies where non-speech sounds (Pavlopoulos, Stasis & Loukis, 2004), or more specifically, environmental sounds (Bravo, Berríos & Aide, 2017) are considered.…”
Section: Discussionsupporting
confidence: 92%
“…Several main concepts emerge from this work: first, although other auspicious classification methods implicitly strive to minimize false positives (e.g. Heinicke et al 2015;Bas et al 2017;Corrada-Bravo et al 2017;Ranjard et al 2017), none that we know of explicitly address false positive mitigation within the context of template-based or threshold-based detection. In addition to making binary predictions about each detection's class, this method also has the advantage of producing probability values for each detection, which may be aggregated in dynamic occupancy models to predict the overall probability of species occurrence (Balantic and Donovan 2019).…”
Section: Discussionmentioning
confidence: 99%
“…Regardless of the automated detection method employed, when acting without human assistance, computer-automated methods often produce an unacceptable number of false alarms, wherein non-target noise is detected and incorrectly assigned to a target species (Acevedo et al 2009). False alarm rates from computerautomated methods may vary widely from project to project based on the prevalence of similar sounds from non-target sources in the soundscape, acoustic characteristics of sounds made by the target species (Towsey et al 2012), the type of automated detection routine used (Corrada-Bravo et al 2017), the available number of target sound examples upon which automated methods may be trained (Stowell et al 2016), the quality of training data in terms of how well it represents the data that will be subject to the automated detection method (Knight and Bayne 2018), and selection of score thresholds above which detections may occur (Knight et al 2017).…”
Section: Introductionmentioning
confidence: 99%
“…To analyze the occurrence of floodplain specialist species in the upstream sites, we used automated classification algorithms in the RFCx-ARBIMON platform to determine the presence or absence of 24 floodplain specialists (diurnal birds) in 93,435 audio recordings (between 05h00 to 18h00). Species-specific identification models allow the detection and analysis of target species in a large dataset and have been successfully used in several groups of organisms (Corrada-Bravo et al 2017;LeBien et al 2020).…”
Section: Analysis Of Bird Communitiesmentioning
confidence: 99%