Im Vestibül der Algorithmen

Author(s):  
Anna Bohn

Abstract Online-access to audiovisual content is rapidly changing the system of film distribution and film presentation. The streaming portal acts as a threshold for online access to moving image works. Algorithms and artificial intelligence are increasingly taking over the selection and curation of audiovisual content and direct viewers’ attention via personalised recommendation systems. The article outlines the market development towards online access to audiovisual content and analyses selected aspects such as artwork (thumbnails) and genres to explore the functionalities of accessory (paratexts) to the film for recommendation systems in video streaming portals and data analysis. From the analysis, the article derives preliminary considerations on requirements that result from the use of artificial intelligence technologies for promoting film and visual literacy in cultural heritage institutions.

2021 ◽  
Vol 11 (2) ◽  
pp. 870
Author(s):  
Galena Pisoni ◽  
Natalia Díaz-Rodríguez ◽  
Hannie Gijlers ◽  
Linda Tonolli

This paper reviews the literature concerning technology used for creating and delivering accessible museum and cultural heritage sites experiences. It highlights the importance of the delivery suited for everyone from different areas of expertise, namely interaction design, pedagogical and participatory design, and it presents how recent and future artificial intelligence (AI) developments can be used for this aim, i.e.,improving and widening online and in situ accessibility. From the literature review analysis, we articulate a conceptual framework that incorporates key elements that constitute museum and cultural heritage online experiences and how these elements are related to each other. Concrete opportunities for future directions empirical research for accessibility of cultural heritage contents are suggested and further discussed.


Sensors ◽  
2021 ◽  
Vol 21 (18) ◽  
pp. 6209
Author(s):  
Andrei Velichko

Edge computing is a fast-growing and much needed technology in healthcare. The problem of implementing artificial intelligence on edge devices is the complexity and high resource intensity of the most known neural network data analysis methods and algorithms. The difficulty of implementing these methods on low-power microcontrollers with small memory size calls for the development of new effective algorithms for neural networks. This study presents a new method for analyzing medical data based on the LogNNet neural network, which uses chaotic mappings to transform input information. The method effectively solves classification problems and calculates risk factors for the presence of a disease in a patient according to a set of medical health indicators. The efficiency of LogNNet in assessing perinatal risk is illustrated on cardiotocogram data obtained from the UC Irvine machine learning repository. The classification accuracy reaches ~91% with the~3–10 kB of RAM used on the Arduino microcontroller. Using the LogNNet network trained on a publicly available database of the Israeli Ministry of Health, a service concept for COVID-19 express testing is provided. A classification accuracy of ~95% is achieved, and~0.6 kB of RAM is used. In all examples, the model is tested using standard classification quality metrics: precision, recall, and F1-measure. The LogNNet architecture allows the implementation of artificial intelligence on medical peripherals of the Internet of Things with low RAM resources and can be used in clinical decision support systems.


2019 ◽  
Vol 2 (1) ◽  
pp. 68
Author(s):  
Ni Putu Ratih Pradnyaswari Anasta Putri ◽  
I Putu Adi Widiantara

Abstract: Pura is one of Balinese architectural works that serves as a place of worship for Hindus. Pura as one of the local wisdom of the Balinese people is often associated with the identity of a region and cultural heritage. Pura is considered as one of the real proofs of the history of history from the past until now. The rolling of time and time, and the absence of adequate historical documentation regarding temples in Bali caused changes and developments that often did not match the standard. Many factors can be said to be the cause of changes or developments in a temple, including: (1) lack of documentation; (2) understanding of local people who are still minimal in the process of building a temple; (3) the absence of rules, awig-awig, or guidelines regarding the process of building a temple; (4) the people's desire to carry out practical and inexpensive temple renovation processes; and (5) people's insensitivity to the identity of their territory. Sites that have historical value are instead replaced with new or current models that are not necessarily based on original literature from previous ancestral orders. Seeing this phenomenon, researchers believe that there needs to be a preservation effort, namely a conservation strategy so that changes and developments can be overcome and controlled according to their portion. This research was carried out in an exploratory manner with qualitative data analysis, which explores data in depth through in-depth interviews.                                     Keywords : Pura, Site, Conservation, IdentityAbstrak: Pura merupakan salah satu karya arsitektur Bali yang berfungsi sebagai tempat ibadah bagi umat Hindu. Pura sebagai salah satu kearifan lokal masyarakat Bali seringkali dikaitkan dengan identitas suatu wilayah dan warisan budaya. Pura dianggap sebagai salah satu bukti nyata perjalanan sejarah dari masa lampau hingga sekarang. Bergulirnya waktu dan jaman, serta tidak adanya dokumentasi sejarah yang memadai mengenai pura-pura di Bali menyebabkan terjadinya perubahan dan perkembangan yang seringkali tidak sesuai pakemnya. Banyak faktor yang dapat dikatakan sebagai penyebab dalam perubahan ataupun perkembangan sebuah pura, antara lain : (1) tidak adanya dokumentasi; (2) pemahaman masyarakat setempat yang masih minim terhadap proses pembangunan sebuah pura; (3) tidak adanya aturan, awig-awig, ataupun guidelines mengenai proses pembangunan sebuah pura; (4) keinginan masyarakat untuk melakukan proses renovasi pura dengan praktis dan murah; dan (5) ketidakpekaan masyarakat akan identitas wilayahnya. Situs-situs yang memiliki nilai historis malah diganti dengan model kebaruan atau kekinian yang belum tentu berdasarkan sastra asli dari tatanan leluhur sebelumnya. Melihat fenomena tersebut, peneliti meyakini perlu adanya sebuah upaya pelestarian yaitu strategi konservasi sehingga perubahan dan perkembangan dapat diatasi dan dikendalikan sesuai dengan porsinya. Penelitian ini dilakukan secara eksploratif dengan analisis data kualitatif, dimana menggali data sedalam-dalamnya melalui wawancara mendalam (in depth interview).Kata Kunci: Pura, Situs, Konservasi, Identitas


Author(s):  
E. Grilli ◽  
E. M. Farella ◽  
A. Torresani ◽  
F. Remondino

<p><strong>Abstract.</strong> In the last years, the application of artificial intelligence (Machine Learning and Deep Learning methods) for the classification of 3D point clouds has become an important task in modern 3D documentation and modelling applications. The identification of proper geometric and radiometric features becomes fundamental to classify 2D/3D data correctly. While many studies have been conducted in the geospatial field, the cultural heritage sector is still partly unexplored. In this paper we analyse the efficacy of the geometric covariance features as a support for the classification of Cultural Heritage point clouds. To analyse the impact of the different features calculated on spherical neighbourhoods at various radius sizes, we present results obtained on four different heritage case studies using different features configurations.</p>


Author(s):  
Seonho Kim ◽  
Jungjoon Kim ◽  
Hong-Woo Chun

Interest in research involving health-medical information analysis based on artificial intelligence, especially for deep learning techniques, has recently been increasing. Most of the research in this field has been focused on searching for new knowledge for predicting and diagnosing disease by revealing the relation between disease and various information features of data. These features are extracted by analyzing various clinical pathology data, such as EHR (electronic health records), and academic literature using the techniques of data analysis, natural language processing, etc. However, still needed are more research and interest in applying the latest advanced artificial intelligence-based data analysis technique to bio-signal data, which are continuous physiological records, such as EEG (electroencephalography) and ECG (electrocardiogram). Unlike the other types of data, applying deep learning to bio-signal data, which is in the form of time series of real numbers, has many issues that need to be resolved in preprocessing, learning, and analysis. Such issues include leaving feature selection, learning parts that are black boxes, difficulties in recognizing and identifying effective features, high computational complexities, etc. In this paper, to solve these issues, we provide an encoding-based Wave2vec time series classifier model, which combines signal-processing and deep learning-based natural language processing techniques. To demonstrate its advantages, we provide the results of three experiments conducted with EEG data of the University of California Irvine, which are a real-world benchmark bio-signal dataset. After converting the bio-signals (in the form of waves), which are a real number time series, into a sequence of symbols or a sequence of wavelet patterns that are converted into symbols, through encoding, the proposed model vectorizes the symbols by learning the sequence using deep learning-based natural language processing. The models of each class can be constructed through learning from the vectorized wavelet patterns and training data. The implemented models can be used for prediction and diagnosis of diseases by classifying the new data. The proposed method enhanced data readability and intuition of feature selection and learning processes by converting the time series of real number data into sequences of symbols. In addition, it facilitates intuitive and easy recognition, and identification of influential patterns. Furthermore, real-time large-capacity data analysis is facilitated, which is essential in the development of real-time analysis diagnosis systems, by drastically reducing the complexity of calculation without deterioration of analysis performance by data simplification through the encoding process.


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