Science and Engineering Faculty, Queensland University of Technology, Brisbane, Australia.
Ecol Appl. 2013 Sep;23(6):1419-28. doi: 10.1890/12-2088.1.
Acoustic sensors can be used to estimate species richness for vocal species such as birds. They can continuously and passively record large volumes of data over extended periods. These data must subsequently be analyzed to detect the presence of vocal species. Automated analysis of acoustic data for large numbers of species is complex and can be subject to high levels of false positive and false negative results. Manual analysis by experienced surveyors can produce accurate results; however the time and effort required to process even small volumes of data can make manual analysis prohibitive. This study examined the use of sampling methods to reduce the cost of analyzing large volumes of acoustic sensor data, while retaining high levels of species detection accuracy. Utilizing five days of manually analyzed acoustic sensor data from four sites, we examined a range of sampling frequencies and methods including random, stratified, and biologically informed. We found that randomly selecting 120 one-minute samples from the three hours immediately following dawn over five days of recordings, detected the highest number of species. On average, this method detected 62% of total species from 120 one-minute samples, compared to 34% of total species detected from traditional area search methods. Our results demonstrate that targeted sampling methods can provide an effective means for analyzing large volumes of acoustic sensor data efficiently and accurately. Development of automated and semi-automated techniques is required to assist in analyzing large volumes of acoustic sensor data.
声传感器可用于估计鸟类等发声物种的物种丰富度。它们可以连续、被动地在较长时间内记录大量数据。这些数据随后必须进行分析,以检测发声物种的存在。对大量物种的声学数据进行自动分析非常复杂,可能会产生大量的假阳性和假阴性结果。经验丰富的调查员进行手动分析可以产生准确的结果;但是,即使是处理少量数据,所需的时间和精力也可能使得手动分析变得不可行。本研究探讨了使用抽样方法来降低分析大量声传感器数据的成本,同时保持高的物种检测准确性。利用四个地点五天的手动分析声传感器数据,我们研究了一系列的抽样频率和方法,包括随机、分层和基于生物学的方法。我们发现,在五天的记录中,在黎明后立即随机选择 120 个一分钟样本,可检测到最多的物种。平均而言,这种方法从 120 个一分钟样本中检测到了 62%的总物种,而传统的区域搜索方法仅检测到了 34%的总物种。我们的结果表明,有针对性的抽样方法可以有效地和准确地分析大量的声传感器数据。需要开发自动化和半自动化技术来协助分析大量的声传感器数据。