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AUDIO-BASED DETECTION AND RECOGNITION OF CONFLICT SPECIES IN OUTDOOR ENVIRONMENTS USING PATTERN RECOGNITION METHODS

机译:模式识别方法在室外环境中基于声音的冲突物种识别

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摘要

Conflicts between wildlife and agriculture are increasing and may result in severe financial losses. The effectiveness of frightening devices is often highly variable, due to habituation to disruptive or disturbing stimuli. An adaptive frightening device, capable of focusing and altering the disruptive stimuli to specific species could potentially reduce the risk of habituation and thereby provide an effective tool against geese and other conflict species. Automated species detection could form a critical component of an adaptive frightening device. In this article we present a method for detection and recognition of conflict species, including rooks and three species of geese, based on their vocalizations. The detection of conflict species is based on a multiple hypothesis algorithm, where conflict species and background are statistically modeled by Gaussian Mixture Models (GMMs), which have been trained with labeled data. Subsequent individual species recognition is accomplished through maximum likelihood evaluation of GMMs trained on labeled species data. Mel Frequency Cepstral Coefficients (MFCC) are used as features for the both the detection and recognition models. The proposed detection algorithm shows strong performance, with a detection rate of 0.98 +/- 0.01, and the species recognition results in true positive rates from 0.87 to 0.97 amongst the four species evaluated in this article. Accuracy, precision and false alarm rates have been used to evaluate the performance of the proposed species recognition algorithm. Based on high detection rate of conflict species (0.98 +/- 0.01) and low false alarm rates (0.02-0.04), we conclude that it is possible to implement robust species specific detection, based on vocalizations, and as such, it can be used as an integrated part of a wildlife management system.
机译:野生动植物与农业之间的冲突正在加剧,并可能导致严重的经济损失。由于习惯于破坏性或干扰性刺激,因此惊恐装置的有效性通常高度可变。能够集中和改变对特定物种的破坏性刺激的自适应惊吓设备可以潜在地降低习惯化的风险,从而提供一种有效的工具来对抗鹅和其他冲突物种。自动化的物种检测可能会形成自适应惊恐设备的关键组成部分。在本文中,我们基于声音发声,提出了一种检测和识别冲突物种的方法,其中包括冲突现象,包括白嘴鸦和三种鹅。冲突物种的检测基于多种假设算法,其中冲突物种和背景由高斯混合模型(GMM)统计建模,该模型已使用标记数据进行训练。随后的单个物种识别是通过对在标记物种数据上训练的GMM进行最大似然评估来实现的。梅尔频率倒谱系数(MFCC)用作检测和识别模型的功能。提出的检测算法表现出很强的性能,检测率为0.98 +/- 0.01,在本文评估的四种物种中,物种识别的真实阳性率为0.87至0.97。准确性,精度和误报率已用于评估所提出的物种识别算法的性能。基于冲突物种的高检出率(0.98 +/- 0.01)和低误报率(0.02-0.04),我们得出结论,有可能基于发声实施强大的物种特定检测,因此,可以用作野生动物管理系统的组成部分。

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