Abstract

Population sizing from still aerial pictures is of wide applicability in ecological and social sciences. The problem is long standing because current automatic detection and counting algorithms are known to fail in most cases, and exhaustive manual counting is tedious, slow, difficult to verify and unfeasible for large populations. An alternative is to multiply population density with some reference area but, unfortunately, sampling details, handling of edge effects, etc., are seldom described. For the first time we address the problem using principles of geometric sampling. These principles are old and solid, but largely unknown outside the areas of three dimensional microscopy and stereology. Here we adapt them to estimate the size of any population of individuals lying on an essentially planar area, e.g. people, animals, trees on a savanna, etc. The proposed design is unbiased irrespective of population size, pattern, perspective artifacts, etc. The implementation is very simple—it is based on the random superimposition of coarse quadrat grids. Also, an objective error assessment is often lacking. For the latter purpose the quadrat counts are often assumed to be independent. We demonstrate that this approach can perform very poorly, and we propose (and check via Monte Carlo resampling) a new theoretical error prediction formula. As far as efficiency, counting about 50 (100) individuals in 20 quadrats, can yield relative standard errors of about 8% (5%) in typical cases. This fact effectively breaks the barrier hitherto imposed by the current lack of automatic face detection algorithms, because semiautomatic sampling and manual counting becomes an attractive option.

Highlights

  • The size of a population is the total number of individual feature elements or units constituting the population

  • We explore the performance of two alternative error variance estimators—namely the naive one based on independence, and a more elaborate one—by Monte Carlo resampling on digitized versions of Fig 1A and Fig 7b of [13]

  • If the sampling protocol is respected, the resulting estimate is necessarily design unbiased in all cases, irrespective of population pattern and size

Read more

Summary

Introduction

The size of a population is the total number of individual feature elements or units (e.g. organisms) constituting the population. If the latter sits in an open area, its elements can in principle be identified and counted from aerial photographs (see for instance [1]). Often the natural reaction is to count all the elements, a task that is usually carried out by hand. This may be bearable for population sizes of the order of 1000 elements, it is tedious, slow, highly-dependent on the skill of the operator and difficult to verify. PLOS ONE | DOI:10.1371/journal.pone.0141868 November 4, 2015

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call