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June 25, 2026
HSE Researchers Make Aldehydes Perform Dual Function
Chemists from HSE University have discovered a way to carry out a reductive addition reaction without using an external reducing agent. Instead, the required 'resource' is supplied by the aldehyde itself, one of the reaction participants. This approach helps prevent unwanted side reactions, reduces toxicity, and simplifies the production and synthesis of organic molecules, including those used in the manufacture of medicines. The study has been published in Journal of Catalysis.
June 25, 2026
HSE Scientists Explain Why Findings in Autism Research Differ
Researchers from the Cognitive Health and Intelligence Centre at HSE University conducted the first-ever systematic review of studies on the specifics of emotion-from-motion perception in autism. The review showed that differences found between autistic and non-autistic individuals are largely associated with the experimental design and the types of tasks given to study participants. The review findings have been published in Research in Autism.
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Polina Nasledskova is interested in identifying gaps in linguistics and topics that have been overlooked by other researchers. In an interview for the  Young Scientists of HSE University project, she spoke about rare ordinal numerals in Nakh-Daghestanian languages, the benefits of knitting for concentration, and the beauty of the Patriarshy Bridge.

 

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Crowd scenes analysis using multiple sliding windows classifiers and Histogram of Oriented Gradient

P. 31–38.
Shalileh S., Shahdi S. O.

In recent years many research works have been devoted either to anomaly detection or anomaly classification. However, very few of them address both of them simultaneously. In this paper, we introduced a new method not only to detect and localize the abnormalities in crowded scenes but also to determine the class of abnormality. In This work, we used Histogram of Oriented Gradient to extract the features. Afterwards, we developed a model for each abnormality class based on structured output logistic regression. Using template matching scheme, those regions with maximum detection scores will be chosen as regions which contain abnormality. Aiming to increase model's precision, an iterative hard negative mining has been utilized. Such method was not applicable unless we had general and application free definition for abnormality. Regarding this, we defined a general abnormality definition. The proposed approach shows significant improvements in results over other state-of-the-art approaches.

Language: English
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Keywords: computer visionanomaly detectionAbnormality detection

In book

2017 10th Iranian Conference on Machine Vision and Image Processing (MVIP)
IEEE, 2017.
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