Nvidia's STEAL AI offers the ability to support inference for better computer vision models

Computer science researchers from Nvidia, University of Toronto and the Institute of Vector Artificial Intelligence in Toronto have devised a more accurate method of detection and prediction where an object starts and ends.

Computer science researchers from Nvidia, University of Toronto and the Institute of Vector Artificial Intelligence in Toronto have devised a more accurate method of detection and prediction where an object starts and ends. This form of knowledge can help improve inference for current computer vision (computer vision) models, and support training data labeling for future models.

In a series of experiments by the team, scientists have found that Semantically Thinned Edge Alignment Learning (STEAL) artificial intelligence model can help improve the accuracy of predictive model 'semantic boundaries 'Modern CASENet adds 4%. The ability to more accurately identify an object's boundaries and angles can provide practical applications for computer vision tasks, from image creation to 3D reproduction. to detect objects.

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Picture 1 of Nvidia's STEAL AI offers the ability to support inference for better computer vision models
Semantically Thinned Edge Alignment Learning (STEAL)

STEAL can be applied to improve existing CNNs or physical edge detection models, but researchers also believe that it can help them label or annotate data more effectively for Computer vision models. To demonstrate this point, scientists used the STEAL method to refine Cityscapes - a set of data with content related to urban environments - first introduced at the Machine Vision conference. Calculate and Identify Model Objects (Computer Vision and Pattern Recognition - CVPR) in 2016.

Currently on GitHub, the STEAL framework has been able to learn and accurately predict every corner of the object in pixels according to the method that researchers call 'active alignment'. Clear reasoning on annotation noise in the training process, and the formula for setting the level of neural networks in learning from misleading labels from the beginning to the end also helps to produce results this.

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Picture 2 of Nvidia's STEAL AI offers the ability to support inference for better computer vision models
Ability to more accurately identify the boundaries and angles of an object

"We will continue to show that our prediction boundaries are significantly more effective than the predicted boundaries obtained from the latest DeepLab-v3 output data, while only using the architecture is much lighter, 'said the team representative in an in-depth interview with arXiv.

The study is named: 'Devil is in the Edges: Learning Semantic Boundaries from Noisy Annotations' (roughly translated: Learning semantic boundaries from annotated noise), and will be widely introduced through a Presentation within the framework of the CVPR 2019 conference taking place in Long Beach, California. Experts from Nvidia Research have made a great contribution to this research, and they will also present the research from a personal perspective at CVPR this year.

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Picture 3 of Nvidia's STEAL AI offers the ability to support inference for better computer vision models

According to a new report, Nvidia said it will support high-performance computer hardware systems from British manufacturer Arm in 2020, and open source TensorRT parsing software. on Github to allow more customization.

Update 19 June 2019
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