Remove 2012 Remove Algorithm Remove Deep Learning
article thumbnail

PACT-3D, a deep learning algorithm for pneumoperitoneum detection in abdominal CT scans

Flipboard

We developed and validated a deep learning model designed to identify pneumoperitoneum in computed tomography images. Delays or misdiagnoses in detecting pneumoperitoneum can significantly increase mortality and morbidity. CT scans are routinely used to diagnose pneumoperitoneum.

article thumbnail

AlexNet: A Revolutionary Deep Learning Architecture

Viso.ai

AlexNet is an Image Classification model that transformed deep learning. It was introduced by Geoffrey Hinton and his team in 2012, and marked a key event in the history of deep learning, showcasing the strengths of CNN architectures and its vast applications.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

AI News Weekly - Issue #369: Mark Zuckerberg’s new goal is creating AGI (artificial general intelligence) - Jan 25th 2024

AI Weekly

ndtv.com Top 10 AI Programming Languages You Need to Know in 2024 It excels in predictive models, neural networks, deep learning, image recognition, face detection, chatbots, document analysis, reinforcement, building machine learning algorithms, and algorithm research. decrypt.co decrypt.co

Robotics 230
article thumbnail

From Internet of Things to Internet of Everything: The Convergence of AI & 6G for Connected Intelligence

Unite.AI

First coined by Cisco in 2012, the Internet of Everything builds on IoT by extending connections beyond machine-to-machine communication. In this article, we’ll look at the concept of the Internet of Everything in detail and shed some light on the relationship between AI and 6G technologies to enable global connectivity.

AI 349
article thumbnail

The Evolution of ImageNet and Its Applications

Viso.ai

Image classification employs AI-based deep learning models to analyze images and perform object recognition, as well as a human operator. The Need for Image Training Datasets To train the image classification algorithms we need image datasets. The labels provide the Knowledge the algorithm can learn from.

article thumbnail

Revolutionizing Image Classification: Training Large Convolutional Neural Networks on the ImageNet Dataset

Marktechpost

CNN’s performance improved in the ILSVRC-2012 competition, achieving a top-5 error rate of 15.3%, compared to 26.2% The success of this model reflects a broader shift in computer vision towards machine learning approaches that leverage large datasets and computational power. by the next-best model. and 28.2%).

article thumbnail

Understanding the different types and kinds of Artificial Intelligence

IBM Journey to AI blog

Early iterations of the AI applications we interact with most today were built on traditional machine learning models. These models rely on learning algorithms that are developed and maintained by data scientists. Due to deep learning and other advancements, the field of AI remains in a constant and fast-paced state of flux.