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Live Acoustic Monitoring of Forests to Detect Illegal Logging and Animal Activity

机译:森林的实时声学监测,以检测非法伐木和动物活动

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Illegal cutting of trees and poaching in the forest has become a serious issue regarding environmental conservation. Trespassing in the forest has an adverse effect on the habitat of animals. There is no effective solution for real-time detection and warning of such activity. Image-based monitoring solutions are too costly and cannot cover a wide range of areas. A novel approach of audio-based monitoring systems using deep neural learning can be proposed as a solution to this problem. A model has to be trained using various audio samples of cutting of trees, gunshots, etc., along with the outliers. There are numerous tree felling techniques and hunting techniques. In the case of methods that are known to the model, the model detects that event and hence warns the authorities. The audio samples in the dataset in the time domain are converted to the frequency domain using fast Fourier transform (FFT). This distributes the signal across corresponding frequencies. For better visualization of features, it is then converted into a Mel scale, and the spectrum of this spectrum is computed using cosine transformation to obtain the Mel-frequency cepstral coefficients. Relevant features are then extracted using these coefficients and classify them using the proposed deep neural learning method. There is a significant difference between the energy concentration distributions of the sound that has to be detected with that of the outliers. This enables to classify the audio samples with a greater signal-to-noise ratio. The resulting model is then used for live monitoring of forests against illegal activities. The current situation of the wildlife demands an accurate database of animal activity in a particular area. This helps both the wildlife tourism and various studies. For addressing this issue, the proposed model is also trained to detect the presence of animals, and it will accomplish it without disturbing the wildlife activity.
机译:非法切割森林中的树木和偷猎已成为环境保护的严重问题。侵入森林对动物的栖息地产生了不利影响。没有有效的解决方案来实时检测和此类活动的警告。基于图像的监控解决方案太昂贵,无法涵盖各种区域。可以提出使用深度神经学习的基于音频监测系统的新方法作为解决这个问题的解决方案。必须使用各种音频样本的树木,枪声等以及异常值进行培训。有许多树砍伐技术和狩猎技术。在模型已知的方法的情况下,该模型检测到该事件,因此警告当局。使用快速傅里叶变换(FFT)将时域中数据集中的音频样本转换为频域。这将信号分布在相应的频率上。为了更好地可视化特征,然后将其转换为MEL标度,并且使用余弦变换来计算该频谱的频谱以获得熔融频率谱系数。然后使用这些系数提取相关特征,并使用所提出的深神经学习方法对它们进行分类。必须用异常值的声音的能量集中分布之间存在显着差异。这使得能够以更大的信噪比对音频样本进行分类。然后将产生的模型用于对非法活动的森林的实时监测。野生动物的当前情况要求特定区域中的动物活动的准确数据库。这有助于野生动物旅游和各种研究。为了解决这个问题,拟议的模型也受过培训以检测动物的存在,并且它将在不扰乱野生动物活动的情况下实现它。

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