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The Use Of Face Recognition Technology: Pros And Cons

In 2015, Snapchat started using face recognition technology in its app to identify users and their friends in photos. The app would scan a photo and compare it to images in its database to find matches. If it found a match, it would notify the user and suggest they add the person as a friend. […]

How Do Snapchat Filters Actually Change Your Face?

Snapchat filters are a fun way to change your appearance and add a bit of personality to your photos. But do they actually change your face? It’s no secret that Snapchat filters can be used to change your appearance. From adding a flower crown to your head to giving you a virtual makeover, there are […]

What Is Machine Vision and How Important Is It to Self-Driving Cars?

What Is Machine Vision and How Important Is It to Self-Driving Cars?
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VTnet+Handcrafted based approach for food cuisines classification by Rahul Nijhawan, Garima Sinha et al

In this paper, we propose a novel hybrid transformer architecture for food cuisine detection and classification. The work carried out within this paper develops a combination of Vision Transformer ensemble architecture with hand-crafted features, thereby making a hybrid Vision Transformer food recognition system. Recently, Vision transformers have been introduced as an alternative means of classification to convolutional neural networks. It performs pattern detection and classification without convolutions and interprets an image as a sequence of patches. The combination of Vision Transformer and hand-crafted features like GIST, HoG (Histogram of Oriented Gradients), and LBP (Local Binary Pattern) were employed on the dataset. The dataset was specifically created (for this work) from the public logging system. It consisted of 13 food categories with 400 images of Indian food items like Ghevar, Idli, Dosa, and much more. It helped to capture a variety of images from every domain and cul

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