LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 1 of total 1

Search options

Article ; Online: Sherlock—A flexible, low‐resource tool for processing camera‐trapping images

Matthew J. Penn / Verity Miles / Kelly L. Astley / Cally Ham / Rosie Woodroffe / Marcus Rowcliffe / Christl A. Donnelly

Methods in Ecology and Evolution, Vol 15, Iss 1, Pp 91-

2024  Volume 102

Abstract: Abstract The use of camera traps to study wildlife has increased markedly in the last two decades. Camera surveys typically produce large data sets which require processing to isolate images containing the species of interest. This is time consuming and ... ...

Abstract Abstract The use of camera traps to study wildlife has increased markedly in the last two decades. Camera surveys typically produce large data sets which require processing to isolate images containing the species of interest. This is time consuming and costly, particularly if there are many empty images that can result from false triggers. Computer vision technology can assist with data processing, but existing artificial intelligence algorithms are limited by the requirement of a training data set, which itself can be challenging to acquire. Furthermore, deep‐learning methods often require powerful hardware and proficient coding skills. We present Sherlock, a novel algorithm that can reduce the time required to process camera trap data by removing a large number of unwanted images. The code is adaptable, simple to use and requires minimal processing power. We tested Sherlock on 240,596 camera trap images collected from 46 cameras placed in a range of habitats on farms in Cornwall, United Kingdom, and set the parameters to find European badgers (Meles meles). The algorithm correctly classified 91.9% of badger images and removed 49.3% of the unwanted ‘empty’ images. When testing model parameters, we found that faster processing times were achieved by reducing both the number of sampled pixels and ‘bouncing’ attempts (the number of paths explored to identify a disturbance), with minimal implications for model sensitivity and specificity. When Sherlock was tested on two sites which contained no livestock in their images, its performance greatly improved and it removed 92.3% of the empty images. Although further refinements may improve its performance, Sherlock is currently an accessible, simple and useful tool for processing camera trap data.
Keywords camera‐trapping ; image classification ; Ecology ; QH540-549.5 ; Evolution ; QH359-425
Subject code 004
Language English
Publishing date 2024-01-01T00:00:00Z
Publisher Wiley
Document type Article ; Online
Database BASE - Bielefeld Academic Search Engine (life sciences selection)

More links

Kategorien

To top