鸟类卫星跟踪数据可视分析方法研究—以朱鹮为例
Research on visual analysis methods of bird satellite tracking data: a case study analysis for Nipponia nippon
- 2023年28卷第8期 页码:2549-2560
纸质出版日期: 2023-08-16
DOI: 10.11834/jig.220403
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纸质出版日期: 2023-08-16 ,
移动端阅览
李欣悦, 蒋娴, 曹卫群, 刘冬平. 2023. 鸟类卫星跟踪数据可视分析方法研究—以朱鹮为例. 中国图象图形学报, 28(08):2549-2560
Li Xinyue, Jiang Xian, Cao Weiqun, Liu Dongping. 2023. Research on visual analysis methods of bird satellite tracking data: a case study analysis for Nipponia nippon. Journal of Image and Graphics, 28(08):2549-2560
目的
2
鸟类跟踪技术的成熟发展使得鸟类专家可以轻松获得大量鸟类运动数据。然而,数据规模的增加使得传统方法难以有效完成数据检索和分析。研究如何辅助专家有效地分析这些数据,挖掘其中的有用信息,具有很强的实用价值。本文基于国家Ⅰ级重点保护物种朱鹮的卫星跟踪数据,从鸟类专家对数据分析的需求出发,提出了一种运动轨迹的可视分析方法。
方法
2
基于二维地图进行多视图协同展示的交互布局方式,以及聚类分析方法等对朱鹮运动轨迹进行可视分析,挖掘朱鹮的生活状态和习性。在以上工作的基础上,设计实现了一个朱鹮运动轨迹可视分析系统。
结果
2
本文提出的可视分析方法,允许用户从时空维度和时期(繁殖期、游荡期、越冬期)、状态(夜宿、觅食)等具有生态学意义的维度观察朱鹮运动轨迹,对运动数据进行统计分析,了解朱鹮运动行为。与现有朱鹮数据分析方法相比,本文提出的可视分析方法能够同时从多个不同维度对运动数据进行分析,针对朱鹮的生活状态和生活习性进行更深入的分析挖掘。
结论
2
案例分析表明,基于本文提出的方法,鸟类专家可以从多个角度对朱鹮运动轨迹数据进行综合分析,达到对鸟类习性和状态进行研究挖掘的目的,并能够为其他鸟类跟踪数据分析工作提供思路和方法。
Objective
2
The study of bird satellite tracking data has positive implications for the conservation of both the birds themselves and the ecological environment. To effectively conserve bird species and to better understand their habitat suitability, it is necessary to study the spatial and temporal characteristics of bird populations. It is essential for recognizing the dominants of species distribution and their dynamics and its relevant conservation. The development of satellite tracking technology can be used to improve the ability of ornithologists to remotely collect large amounts of track movement data for birds, and global positioning system(GPS)-based track migration data is one of commonly-used collected types of data today. Analysis of acquired satellite track data can help solve many problems, such as how individual birds interact with each other, the foraging strategies, migration and movement routes of individuals in different time dimensions, and the effects of environmental changes due to climate and human factors. With recent technological advances, the frequency of positioning satellite transmitters and the variety of data collected have increased greatly, and a major challenge that has arisen is how to adequately and effectively analyze these large data. Ornithologists use existing data analysis methods to analyze data using Excel or R libraries, or plotting data points on satellite maps directly. Data visualization and visual analysis techniques, as a way to present large amounts of data, can yield users to gain better understanding and insight into datasets, providing them with an emerging tool, which can uncover complex patterns contained in the data and inspire new hypotheses and analyses.
Method
2
Nipponia nippon is a world-endangered species and a national class I key protected animal, mainly distributed in the Hanzhong Nipponia Nippon National Nature Reserve and surrounding counties in Shaanxi. With continuous conservation efforts, the wild population of Nipponia nippon has steadily increased in recent years, and its distribution has spread to the periphery of the reserve further. In order to follow the trend of the spreading activities of the Nipponia nippon and its adaptation to the contextual of the reserve, bird-related expertise has conducted a satellite tracking study of the Nipponia nippon from 2013—2019. The transmitter accounts for about 1.5% of the Nipponia nippon’s body weight and is worn on its back to receive information on its activity loci and status at regular intervals. Based on the satellite tracking data of Nipponia nippon, as a national class I key protected species, we develop an in-depth demand analysis of the visualization and visual analysis of tracking data based on the needs of ornithologists for data analysis and around the concerns of ornithologists for Nipponia nippon. The distribution and changes of foraging and nocturnal sites of Nipponia nippon are as an important basis for analyzing its living environment and living condition; the changes of daily foraging movement and the distance of foraging movement of Nipponia nippon can reflect the ease of access to food and the activity level of individuals of Nipponia nippon on that day, and thus we investigate the visual analysis method in detail. Furthermore, we propose a visual analysis method of movement trajectory through the interactive layout of multi-view collaborative display based on 2D map and visual analysis of the cluster analysis-based movement trajectory of Nipponia nippon. Correlative ornithologists can observe and explore the tracking data of one or more Nipponia nippon, and the influence of individual living states, behavioral characteristics, living environment conditions of Nipponia nippon can be explored, and the differences among individuals to facilitate corresponding conservation measures. In addition, due to the problems of sensing equipment and communication conditions, some of Nipponia nippon-related data collected by the transmitter are missing for satellite tracking data, and the missing data are random in terms of period length and distribution. This affects the analysis and mining of the data inevitably, and it is not conducive to the exploration of the life habits of Nipponia nippon by experts. Therefore, we interpolate the missing data in the Nipponia nippon tracking dataset based on long short-term memory(LSTM) deep learning method.
Result
2
A visual analysis system for the movement of Nipponia nippon is designed and implemented. Based on the visual analysis method proposed, users are able to observe the movement trajectory of Nipponia nippon from multiple dimensions spatiotemporally, and the night-time and foraging sites are analyzed for Nipponia nippon in related to its dimensions with different ecological significance, and daily foraging activity distance indexes of interest is analyzed and revealed their changes over time. Compared with the existing data analysis methods for Nipponia nippon, the visual analysis method proposed can be used to analyze the dynamic data from several different dimensions at the same time, and more in-depth analysis and mining are conducted for the living condition and habits of Nipponia nippon.
Conclusion
2
The case study shows that based on the method proposed, ornithologists can analyze Nipponia nippon movement track data comprehensively from multiple perspectives. The system is oriented to a visual analysis system for comprehensive analysis of Nipponia nippon tracking data, which can meet the requirements for analysis of Nipponia nippon movement trajectories and an effective method is offered for research utilization of tracking data. Its potentials can be implicated for other related flying bird tracking data.
卫星跟踪可视分析多视图协同聚类分析时序数据插补
satellite trackingvisual analysismulti-view collaborationcluster analysistime-series data interpolation
Alonso W J and McCormick B J J. 2012. EPIPOI: a user-friendly analytical tool for the extraction and visualization of temporal parameters from epidemiological time series. BMC Public Health, 12(1): #982 [DOI: 10.1186/1471-2458-12-982http://dx.doi.org/10.1186/1471-2458-12-982]
Deng Z K, Weng D, Chen J H, Liu R, Wang Z B, Bao J, Zheng Y and Wu Y C. 2020. AirVis: visual analytics of air pollution propagation. IEEE Transactions on Visualization and Computer Graphics, 26(1): 800-810 [DOI: 10.1109/TVCG.2019.2934670http://dx.doi.org/10.1109/TVCG.2019.2934670]
Hu C S. 2016. The Home Range and Dispersal Ecology of the Crested Ibis (Nipponia Nippon). Beijing: Beijing Forestry University
胡灿实. 2016. 朱鹮(Nipponia nippon)活动性及其扩散模式研究. 北京: 北京林业大学
Huang Z X, Zhu J G, Wang K, Cai D J and Huang T. 2016. A preliminary report on the distribution and breeding of wild-released Crested Ibis in Dongzhai, Henan. Bulletin of Biology, 51(10): 53-56
黄治学, 朱家贵, 王科, 蔡德靖, 黄涛. 2016. 河南董寨野化放飞朱鹮的分布繁殖初报. 生物学通报, 51(10): 53-56
Javed W and Elmqvist N. 2010. Stack zooming for multi-focus interaction in time-series data visualization//Proceedings of 2010 IEEE Pacific Visualization Symposium (PacificVis). Taipei, China: IEEE: 33-40 [DOI: 10.1109/PACIFICVIS.2010.5429613http://dx.doi.org/10.1109/PACIFICVIS.2010.5429613]
Klein K, Jaeger S, Melzheimer J, Wachter B, Hofer H, Baltabayev A and Schreiber F. 2021. Visual analytics of sensor movement data for cheetah behaviour analysis. Journal of Visualization, 24(4): 807-825 [DOI: 10.1007/s12650-021-00742-6http://dx.doi.org/10.1007/s12650-021-00742-6]
Kölzsch A, Slingsby A, Wood J, Nolet B A and Dykes J. 2013. Visualisation design for representing bird migration tracks in time and space//Workshop on Visualisation in Environmental Sciences. Leipzig, Germany: The Eurographics Association: 25-29 [DOI: 10.2312/PE.EnvirVis.EnvirVis13.025-029http://dx.doi.org/10.2312/PE.EnvirVis.EnvirVis13.025-029]
Konzack M, Gijsbers P, Timmers F, van Loon E, Westenberg M A and Buchin K. 2019. Visual exploration of migration patterns in gull data. Information Visualization, 18(1): 138-152 [DOI: 10.1177/1473871617751245http://dx.doi.org/10.1177/1473871617751245]
Liu D P, Ding C Q and Chu G Z. 2003. Home range and habitat utilization of the crested ibis in the breeding period. Acta Zoologica Sinica, 49(6): 755-763
刘冬平, 丁长青, 楚国忠. 2003. 朱鹮繁殖期的活动区和栖息地利用. 动物学报, 49(6): 755-763 [DOI: 10.3969/j.issn.1674-5507.2003.06.006http://dx.doi.org/10.3969/j.issn.1674-5507.2003.06.006]
Palleschi A and Crielesi M. 2019. A visual analytics system of data gathered from colonial seabirds//Proceedings of the 23rd International Conference Information Visualisation (IV). Paris, France: IEEE: 224-227 [DOI: 10.1109/IV.2019.00045http://dx.doi.org/10.1109/IV.2019.00045]
Qing X Y and Niu Y G. 2018. Hourly day-ahead solar irradiance prediction using weather forecasts by LSTM. Energy, 148: 461-468 [DOI: 10.1016/j.energy.2018.01.177http://dx.doi.org/10.1016/j.energy.2018.01.177]
Saraiya P, Lee P and North C. 2005. Visualization of graphs with associated timeseries data//Proceedings of 2005 IEEE Symposium on Information Visualization. Minneapolis, USA: IEEE: 225-232 [DOI: 10.1109/INFVIS.2005.1532151http://dx.doi.org/10.1109/INFVIS.2005.1532151]
Uchida Y and Itoh T. 2009. A visualization and level-of-detail control technique for large scale time series data//Proceedings of the 13th International Conference Information Visualisation. Barcelona, Spain: IEEE: 80-85 [DOI: 10.1109/IV.2009.33http://dx.doi.org/10.1109/IV.2009.33]
Walker J, Borgo R and Jones M W. 2016. TimeNotes: a study on effective chart visualization and interaction techniques for time-series data. IEEE Transactions on Visualization and Computer Graphics, 22(1): 549-558 [DOI: 10.1109/TVCG.2015.2467751http://dx.doi.org/10.1109/TVCG.2015.2467751]
Wang Q, Zhang J, Yan W B and Wu J. 2019. Spatial-temporal characteristics of vegetation cover in typical habitat of Crested Ibis. Ecological Science, 38(5): 193-199
王琦, 张静, 颜文博, 吴洁. 2019. 朱鹮典型栖息地植被覆盖时空特征研究. 生态科学, 38(5): 193-199 [DOI: 10.14108/j.cnki.1008-8873.2019.05.025http://dx.doi.org/10.14108/j.cnki.1008-8873.2019.05.025]
Zhang X X. 2016. Preliminary Study on the Nocturnal Clustering Behavior of a Reintroduced Population of Crested Ibis (Nipponia nippon). Xi’an: Shaanxi Normal University
张雪仙. 2016. 朱鹮 (Nipponia nippon) 再引入种群夜宿集群行为初步研究. 西安: 陕西师范大学
Zheng L M. 2018. Habitat Evaluation for Reintroduced Crested Ibis (Nipponia Nippon) in Dongzhai National Nature Reserve, based on Maximum Entropy Model. Xinxiang: Henan Normal University
郑刘梦. 2018. 基于MaxEnt模型对董寨再引入朱鹮的生境适宜性评价. 新乡: 河南师范大学
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