Insects make up over 70% of the world's known species (Resh and Carde 2009). This is well represented in collections across the world, with the Natural History Museum's pinned insect collection alone making up nearly 37% of the museum's remarkable 80 million specimen collection. Thus, this extraordinary dataset is a major focus of digitisation efforts here at the Museum. While hardware developments have seen digitisation processes significantly improve and speed up (Blagoderov et al. 2017), we now concentrate on the latest software and explore whether machine learning can lend a bigger hand in accelerating our digitisation of pinned insects.Traditionally, the digitisation of pinned specimens involves the removal of labels (as well as any su...
With increasing pressure on the limited taxonomical expertise in not only Commonwealth Scientific an...
Capturing data from specimen images is the most viable way of enriching specimen metadata cheaply an...
We describe an effective approach to automated text digitisation with respect to natural history spe...
Insects make up over 70% of the world's known species (Resh and Carde 2009). This is well represente...
The world's natural history collections contain at least 2 billion specimens (Ariño 2010), represent...
Digitisation of natural history collections draws increasing attention. The digitised specimens not ...
Digital technology presents us with new and compelling opportunities for discovery when focused on t...
Pinned insect images and corresponding label outlines in JSON format. Part of this dataset contains ...
Techniques for image recognition through machine learning have advanced rapidly over recent years an...
The completeness and quality of the information in natural history museum collections is essential t...
New innovations are needed to speed up digitisation of insect collections. More than one half of all...
The Natural History Museum, London (NHM) has embarked on an ambitious Digital Collections Programme ...
The Natural History Museum (NHM) of London has embarked on an ambitious programme to digitise the 80...
The Natural History Museum holds over 80 million specimens and 300 million pages of scientific text....
Museum specimens have enormous potential for use in a broad range of biodiversity and evolutionary q...
With increasing pressure on the limited taxonomical expertise in not only Commonwealth Scientific an...
Capturing data from specimen images is the most viable way of enriching specimen metadata cheaply an...
We describe an effective approach to automated text digitisation with respect to natural history spe...
Insects make up over 70% of the world's known species (Resh and Carde 2009). This is well represente...
The world's natural history collections contain at least 2 billion specimens (Ariño 2010), represent...
Digitisation of natural history collections draws increasing attention. The digitised specimens not ...
Digital technology presents us with new and compelling opportunities for discovery when focused on t...
Pinned insect images and corresponding label outlines in JSON format. Part of this dataset contains ...
Techniques for image recognition through machine learning have advanced rapidly over recent years an...
The completeness and quality of the information in natural history museum collections is essential t...
New innovations are needed to speed up digitisation of insect collections. More than one half of all...
The Natural History Museum, London (NHM) has embarked on an ambitious Digital Collections Programme ...
The Natural History Museum (NHM) of London has embarked on an ambitious programme to digitise the 80...
The Natural History Museum holds over 80 million specimens and 300 million pages of scientific text....
Museum specimens have enormous potential for use in a broad range of biodiversity and evolutionary q...
With increasing pressure on the limited taxonomical expertise in not only Commonwealth Scientific an...
Capturing data from specimen images is the most viable way of enriching specimen metadata cheaply an...
We describe an effective approach to automated text digitisation with respect to natural history spe...