论文标题
机器学习方法,用于识别Otariid Pinnipeds中的猎物处理活动
Machine learning approaches for identifying prey handling activity in otariid pinnipeds
论文作者
论文摘要
在可穿戴设备中开发的带有传感器的可穿戴设备的系统被广泛用于收集人类和动物活动的数据,以进行数据自动分类。这些系统的一个有趣的应用是支持传感器数据分析收集的动物行为监测。这是一个具有挑战性的领域,尤其是具有固定的记忆能力,因为这些设备应该能够长时间自主操作,然后再被人类运营商检索,并且能够在船上进行分类可以显着提高其自主权。在本文中,我们专注于识别海豹中的猎物处理活动(当动物开始附着和咬猎物时),这是确定成功觅食活动的主要运动之一。考虑的数据是3D加速度计和深度传感器值的流,该流直接通过密封件上的设备收集。为了分析这些数据,我们提出了一个基于机器学习(ML)算法的自动模型。特别是,我们比较了三种ML算法的性能(就准确性和F1SCORE而言):输入延迟神经网络,支持向量机和回声状态网络。我们关注在板载上开发自动分类器的最终目标。为此,在本文中,对每种ML方法获得的性能及其内存足迹进行了比较。最后,我们强调了使用ML算法在野生动物监测的可行性方面的优势。
Systems developed in wearable devices with sensors onboard are widely used to collect data of humans and animals activities with the perspective of an on-board automatic classification of data. An interesting application of these systems is to support animals' behaviour monitoring gathered by sensors' data analysis. This is a challenging area and in particular with fixed memories capabilities because the devices should be able to operate autonomously for long periods before being retrieved by human operators, and being able to classify activities onboard can significantly improve their autonomy. In this paper, we focus on the identification of prey handling activity in seals (when the animal start attaching and biting the prey), which is one of the main movement that identifies a successful foraging activity. Data taken into consideration are streams of 3D accelerometers and depth sensors values collected by devices attached directly on seals. To analyse these data, we propose an automatic model based on Machine Learning (ML) algorithms. In particular, we compare the performance (in terms of accuracy and F1score) of three ML algorithms: Input Delay Neural Networks, Support Vector Machines, and Echo State Networks. We attend to the final aim of developing an automatic classifier on-board. For this purpose, in this paper, the comparison is performed concerning the performance obtained by each ML approach developed and its memory footprint. In the end, we highlight the advantage of using an ML algorithm, in terms of feasibility in wild animals' monitoring.