DHQ: Digital Humanities Quarterly
2023
Volume 17 Number 2
Volume 17 Number 2
Distant Reading and Viewing: “Big Questions” in Digital Art History and Digital Literary Studies
Introduction
While digital literary studies are well established, digital art history is only
taking its first baby steps. As distant reading has contributed to
revolutionizing traditional literary studies, distant viewing is lagging behind.
Machines are taking their first looks at visual artworks in the research
projects that, at this stage, are confusingly bordering domains of computer
science and art history. This essay attempts to better demarcate these borders
by looking at possible questions that are both art-historical in nature and
impossible or hard to answer without computational techniques. For this task, we
compare the distant reading with distant viewing and explore the experience of
the “older sister” discipline of digital literary studies.
Related Work
Although articles dedicated to defining digital art history acknowledge digital
literary studies as its predecessor in digital humanities, the systematic
research comparing the two disciplines is minimal. [Bishop 2018]
points out parallels between the disciplines by providing critical arguments
against digital art history. [Arnold and Tilton 2019] analyze
similarities and differences between natural language processing and computer
vision in their essay on “distant viewing.” However,
the authors focus on methodological aspects of machine vision rather than
epistemology and research questions.
This essay primarily relies on the articles on digital art history ([Rodríguez-Ortega 2020], [Drucker et al. 2015]
[Bender 2015]), critique of the quantitative approach in art
history ([Pollock 2014]), and theoretical and methodological
inquiries on digital literary studies ([Stefan et al. 2015]
[Moretti 2000]
[Coste 2018]). We review the literature to identify similarities
in goals and challenges in digital art history and digital literary studies and
how the experience of the latter can help to define research questions most
suitable for using machine-aided vision in art history.
Digital Art History and Digital Literary studies
Digital art history and digital literary studies are the disciplines under the
umbrella term of digital humanities – an area broadly described as an
intersection of humanities disciplines and computing or digital technologies
[Drucker 2021]
[Burdick et al. 2016]. The inception of this interdisciplinary field is
often linked to the work of Roberto Busa on computer-generated concordance of
the works of Thomas Aquinas in 1940 and has long time been synonymous with the
study of text [Schneider 2012]
[Dalbello 2011]. Therefore, it comes as no surprise that digital
literary studies have already earned their status through acknowledged
contributions to the more general domain of digital humanities. In contrast,
digital art history is still trying to prove itself [Joyeux-Prunel 2008]. Digital scholars in digital humanities like
Stephen Ramsay, Franco Moretti, Matthew Jockers, Geoffrey Rockwell, and others
have established the use of digital tools as part of the interpretative process
and means of approaching literary works in novel ways through the methodology of
distant reading [Earhart 2015]. Digital art history, however,
relied on the processing of textual meta-data and, until recently, did not
experience the deep transformation of the relationship between object and
subject in its research. Although computational techniques of signal processing
aiding art historians in authorship attribution and dating tasks have been
around for more than four decades [Stork 2009], only recent
advances in computer vision have brought a possibility of research parallel to
distant reading in digital art history. The key milestones for computer vision
were the introduction of Convolutional Neural Network algorithms and the
creation of the ImageNet image database in 2012, which enabled the training of
deep learning algorithms for object recognition. They were later generalized for
other tasks, including style recognition in artistic images [Bar et al. 2014]. Possibilities to challenge human sight when looking at
art images have attracted computer scientists and art historians alike [Ginosar et al. 2015]
[Lang and Ommer 2018]
[Manovich 2012]
[Schich et al. 2008]
[Schich 2015].
Distant Reading and Distant Viewing
The idea of distant reading is linked to the emergence of open data initiatives
and digitization of texts, for example, Google Books, Internet Archive PHI, and
Perseus Digital Library [Stefan et al. 2015]. Distant reading in the
field of literature was introduced by Franco Moretti [Moretti 2000] and Matthew Jockers's "macroanalysis" [Jockers 2013] as a
possible answer to the challenges of massive text corpora. While Moretti mostly
focuses on visualization techniques (like Manovich in digital art history),
Jocker draws analogy from macroeconomics and emphasizes statistical analysis
methods [Stefan et al. 2015]. The analog term in visual culture -
distant viewing - already appeared in 2015, although it
referred to statistics of artworks metadata, not the computer-vision analysis of
images [Bender 2015]. A new formulation of distant viewing
methodology already relies on machine-aided vision [Arnold and Tilton 2019]. The idea of analyzing artistic images at a
scale that came before the articulation of the concepts is enabled by
digitization and opening of visual image archives - Getty Research Institute,
Google Art Project, and others [Drucker et al. 2015]. Some interesting
studies on social media image content or classical paintings have entered the
art history scene [Manovich 2012]
[Schich et al. 2008]
[Schich 2015].
Similarly to distant reading, distant viewing includes statistical techniques and
visualization and enables a macro view of big image data [Arnold and Tilton 2019]. There are, however, important differences.
One of them is the semantic gap between raw pixels of an image and structured
features extracted by a deep learning algorithm [Arnold and Tilton 2019]. Other – inherent materiality of most of the classical objects of art history
and digitization error [Drucker et al. 2015]. Those two factors make the
interpretation and role of the researcher even more implicit in the methodology
of distant viewing. Both distant reading and distant viewing enable data-driven
discovery; however, this essay attempts to clarify questions that this approach
can anticipate.
Statistics versus Interpretation
As the very term “Distant Viewing” is inspired by its predecessor “Distant
Reading”, the criticism towards this new approach is similar to that of
new literary study methodologies. The reoccurring motif in the criticism is
juxtaposing the quantitative and qualitative approach with binaries of counting
or reading, statistics, or critical thinking. Still, as Mark Algee-Hewitt points
out, the goal of computational humanities is to find a balance between them [Algee-Hewitt 2019]. According to Coste, the quantitative approach
to literature has qualitative implications; the scope achievable with distant
reading transforms the relationship with the unit observed, making it comparable
with the big literary data corpora [Coste 2018]. On the one hand,
we have a reality conditioned by our senses (close reading), and on the other –
by the instruments (distant reading). However, it is the researcher that creates
knowledge through the act of interpretation, not the machine. The same is true
about the field of digital art history. The idea that statistical methods do not
involve the interpretation or critical thinking is a misconception rooted in the
popular imagination, with labels such as “dry statistics” instead of
intuition and insight. Every statistical model is rooted in the qualitative
assumptions of the world. For example, the mathematical model of image and style
has an implicit concept of an image and modes of vision [Rodríguez-Ortega 2020]. The other extreme, pointed out by Claire
Bishop in the critical article on digital art history, is overly enthusiastic
reliance on empiricism or data as bearing objective truth and abandoning
interpretation and search for causality [Bishop 2018]. Here we
explore how art history can be enriched with approaches that consciously apply
computational methods together with theory and interpretation.
Flat comparisons versus the big questions
The first successful attempt to use algorithms to identify artistic influences in
paintings made the headlines promising computers will push art historians out of
business [Sparkes 2014]
[Emerging Technology 2015]. Computer scientists-led project
explored a database of more than 80,000 paintings by more than 1,000 artists
created over 15 centuries. The authors have built models for attributing
artistic styles and spotting influence links among the artists from
algorithmically extracted visual features in the artworks. Apart from being able
to match well-acknowledged links between styles and artists (for example,
expressionism and fauvism), the algorithms also showed a never-before-seen
visual resemblance between Frederic Bazille's Studio 9 Rue de la Condamine
(1870) and Norman Rockwell's Shuffleton's Barber Shop (1950) [Saleh et al. 2016]. It did not take long for the community of art
historians to react. The findings were dismissed as representing an outdated
"connoisseurial art history" which ignores social, ideological, economic, and
political components to form "larger narratives" [Pollock 2014].
As evident from the authors' response to criticism [Elgammal 2014], here we see the case where art history is used to test and develop
algorithms rather than to answer big questions about art history. But can it
work the other way around? Can distant viewing enable the eyes of an art
historian to see differently and answer or raise new questions through the
process of interpretation? As Matthew Lincoln points out, good research starts
with art-historical rather than computer science questions [Drucker 2013]. But are all art-historical questions equally
answerable with massive data and computer algorithms? In the following
paragraphs, we will explore the cases from literary studies and digital art
history to identify questions that can bring qualitative value to the discipline
and transform the relationship with analyzed artworks.
Challenging the Canon
Pollock calls computational “influence tracing” a
disguised way of protecting the canon [Pollock 2014]. The ongoing
project “Images' Contagions” aims to prove quite the
opposite. The Artl@s research group of art historians, engineers, and cognitive
scientists approach the massive corpora of digitized images and related textual
data with Deep Learning algorithms for pattern and object recognition. In
addition, qualitative methods from history, visual studies, and cognitive
sciences are applied [Joyeux-Prunel, B. 2012]. The project's
objectives are to identify the most recurrent images and circulations of their
copies and visual quotations. Iconographic and stylistic similarities and
influences are analyzed by applying a model of epidemiology of images inspired
by biology and based on mathematical network analysis. According to the
project's authors, this approach, together with the available big image data, is
the opportunity to challenge the “old geopolitical model of
prescriptive centers and imitative peripheries”
[Joyeux-Prunel, B. 2012]. The macro level of distant viewing can help
to challenge the ideological defense of canon better than traditional art
history which favors monographic studies [Joyeux-Prunel 2008]
According to Franco Moretti, close reading limits one to the “canonical fraction” of Western literature, let alone
world literature [Moretti 2013].
The broader horizons provide a different relationship with the artwork but are
unreachable to the human eye. It is even more true if one adds user-generated
content on social media as a contemporary art form [Manovich 2012]. Therefore machine-aided vision comes as a tool that opens important
possibilities, even if it does not allow the intimacy of close reading or close
viewing. As Bender points out, studying the spread of visual quotations requires
a quantitative approach [Bender 2015].
Counting and Counter-intuitive insights
Reading or viewing at a large scale is an unachievable task for humans not
equipped with algorithmic tools. Another one is precise quantification. The
application of algorithmic graph analysis and network visualization technique to
classic plays by Shakespeare and Sophocles has revealed that main characters do
not necessarily have the central role in the character network of the play, for
example, Cesar in Shakespeare's Julius Caesar
[Coste 2018]
[Grandjean 2015]. One may argue that simple counting does not
change the role of the main character. However, it can encourage a more detailed
look at characters' space and how literary means are used to create centrality.
Arnold and Tilton applied a similar approach to analyzing visual culture. The
authors use a deep learning face recognition algorithm to study the appearance
of main characters in situational comedies Bewitched (1964–1972) and I Dream of
Jeannie (1965–1970). The authors start by locating the faces in each
frame, then identify the main characters and cluster them based on camera angles
and distances [Arnold, Tilton, and Burke 2019]. The study aimed to inquire about
the gender roles promoted by television. It has challenged the intuitive
perception of both Samantha in Bewitched and
Jeannie in I Dream of Jeannie as leading characters
by showing that Jeannie appears on the screen much less than Samantha.
Furthermore, Jeannie is often visually framed as a supporting rather than the
main character [Arnold, Tilton, and Burke 2019]. This revelation challenges
dominating views that two TV series represent the same female roles [Arnold, Tilton, and Burke 2019]. The study is an example of how digital methods
allow massive data analysis that would be tedious work, if at all possible,
without computational aid. However, the central insight of the study would not
be possible without an art historian's intuition and knowledge of visual tools
for building character in TV drama.
Conclusions
Traditional art historians often critique distant viewing, and distant reading is
controversial in literary studies. However, both methods provide possibilities
unachievable with conventional methods. Recent examples of computer algorithms
in art history suggest that this methodology allows the transformation of the
relationship with the art object rather than mere counting. The analog research
cases from literary studies strengthen this claim. While traditional methods
have their place in the discipline, the digital approach is superior in working
with the massive scope of data in global or longitudinal studies. It has the
advantage of questioning traditional beliefs and well-established canons with
quantitative analysis. Therefore, computational tools can help to reposition
standard objects in their historical or ideological contexts. Computational
tools become even more relevant when new objects – internet and social media
content – begin to capture the attention of researchers in art history. However,
the future challenges include establishing rigorous interdisciplinary frameworks
and evaluation criteria together with openly available high-quality datasets. In
addition, developments in institutional support, availability of
multidisciplinary training, and technical infrastructure are important in
developing distant viewing in digital art history research.
Acknowledgements
The author is thankful to Dr James Stewart who provided useful discussion and
feedback when writing this article.
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