Robots can help us re-understand art
Contrary to popular misconception, robotic art and other applications of AI in the fine arts can help artists achieve creative and commercial success.
One cannot help but be amazed, and even to some extent, frightened by Michelangelo's immortal work "David". This original painting, located in Florence, Italy, stands out for several reasons: its massive frame is larger than life yet strangely intimate and touching, its artistic choice to depict David as a young adult, Rather than a more by-the-book version of Goliath's child-murdering artistic choices, and the knowledge that there are so many replicas of them around the world.
Usually, the creation of such masterpieces is divided into two parts. The first is to ride the vortex of inspiration and influence and mentally come up with an original concept. The second part is using physical tools and skills to bring this concept to life.
Such a classic masterpiece requires these two parts to come together perfectly, a process that can take years, even decades, to perfect. So how did robots enter this free-spirited space? As we will see, robot art enables today's and future art creators to combine these two parts of art and craft with inhuman efficiency.
What’s the Difference Between Art and Craft
When it comes to the terms art and craft, it’s easy to get confused and use one of the terms in conversation when in fact, Talk about another term. While some elements of art and craft blend into each other, the difference is easily discernible.
Art is a form of work that deals with abstract factors such as innate feeling and imagination, while craft is more about tangible results. Naturally, therefore, the former is open and unstructured and, as one can imagine, does not take into account all the consequences and outcomes of specific actions. The latter adds realism to the equation, with aspects such as boundaries, skills and expertise giving a definite shape to the original art.
Simply put, art and craft are both included in the artist’s creative process. When done right, art engages viewers on an emotional level, while craftsmanship wows them with talent and technical perfection. Unlike art, continued training and experience lead to understanding and eventual mastery of any craft.
For example, an artist imagines a piece in his or her mind, while a skilled craftsman has the technical acumen and direction that allows them to follow the blueprint and bring the creation to life. And creators, such as those working in the fine arts, need to use both elements to bring their own imaginations to life.
How Robot Art Empowers Today's Artists
In modern times, technology has been used to reshape the art industry. Today, technologies such as artificial intelligence, robotics, and computer vision have developed to the point where they can decisively influence and enhance fine art. The emergence of robotic art allows creators to create art without any worries, while machines simplify the craft aspects, ultimately helping them commercialize their creations and make a living from it.
Art for wider dissemination
An abstract entity that cannot be recreated in a moment. Certain events, like a couple's reaction to their newborn's first cry, the look of genuine fear on a person's face when faced with the terminal illness they have, and others are too real to replicate. The same goes for moments of artistic inspiration. Creating art largely involves hitting the right emotional chords at the perfect moment. Therefore, even the greatest artist cannot reproduce an outstanding work of art in a similar way.
Professional robotic art involves using deep learning algorithms and pattern recognition tools to find the truly distinctive elements in a beautiful work of art. Pattern recognition allows artificial intelligence and robots to mathematically recapture the beat of the work’s creation. While such systems lack the impulsive emotion and imagination of artists, they make up for it with the precision and number-crunching power of robots.
There are artificial intelligence software and robotic tools configured to replicate lost masterpieces of ancient art. In 2018, AI researchers at MIT developed an AI-based app that could do just that. When it was first developed, the tool could recreate historical paintings with an accuracy four times greater than the most advanced reproduction technology available to researchers at the time.
Like any commercial producer, artists need to produce original copies of their fine art in order to sell it to as many buyers as possible. The art of robotics allows them to be precise and consistent.
Bringing digital artwork to life
Creators can choose to record their artistic ideas in a computer or hand-made document. Robot Art enables artificial intelligence and robots to use predictive analytics and other cognitive tools to fill in the gaps that may exist in the original design before creating a true work of art.
There are tools and systems that can transform the ideas that form the basis of a work of art in the digital realm into canvas or real-world materials. An example of this transformation is the AINORN project created by the developers of Art-Supreme. The project involves a robotic arm that scans the coordinates of a digital painting before using real paint and brushes to paint the appropriately scaled digital painting on the canvas.
Natural language generation tools such as GPT-3 can create large amounts of text based on basic ideas and summaries. Likewise, the visual equivalent of robotic art tools enables artists to create incomplete ideas, such as incomplete musical compositions, from which intelligent automated tools can then create works of art.
Inspiring Real-World Artists
As any artist will tell you, creative block can be a real problem for even the most accomplished creators. When true inspiration is hard to come by, little things like a simple brushstroke or a germ-level idea can serve as a spark that continues to inspire an artist's creativity.
Robot Art is fully capable of providing such a trigger for today’s art creators. To develop a robotic art system that could achieve this goal, developers fed an artificial intelligence algorithm thousands of training images. Training images consist of original artwork and similar reference materials. Basically, robotic systems are rigorously configured so that they can extract factors such as complexity, ambiguity, and novelty in every piece of beautiful art they produce.
Robotic art models used to create art triggers typically consist of two neural network algorithms, one to generate a copy of the painting and another to evaluate the difference between the input sample of artwork and the generated output. . In order to maintain originality, Robot Trigger Creator will stop producing output once one of these factors goes to zero, i.e. no difference can be found between the original work and the generated result. Similarly, modern generative design applications can generate artwork based on input constraints provided to them.
Ultimately, we can see from the listed applications that robot art tools and AI help artists find inspiration, realize their creativity through triggers, and replicate original art, increasing the income of outstanding artists.
Why robots will have a negative impact on art
Intelligent automation has its positive side and can improve art in many ways. At the same time, it could create new dilemmas for fine art creators and others involved in the field.
Easy Copy
The copying capabilities of Robot Art Tools make it easy for individuals to create original works of art to be pirated and sold to buyers without their knowledge. Losses due to piracy are difficult to trace and can have an adverse impact on the livelihood of art creators.
The redundancy of craftsmen
In some fields, the statement that technology makes people unemployed may be exaggerated, because technology is ultimately used to assist workers rather than completely replace them, but it Might be detrimental to the employment of true craftsmen as it would actually make them redundant. Additionally, talented art creators may find it more financially attractive to use technology rather than expensive skilled craftsmen to shape their art.
In this day and age, creating an art masterpiece like Michelangelo's David with digital assistance can be a daunting task, but it's not entirely out of reach with the latest art automation tools Out of reach. Imagining this creative process has the power to fill you with awe. Robot art may have some issues to work out, but it can add a new dimension to fine art in a way that other technologies can't.
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