![]() We equip your network with field data collection tools to collect the right training data, and we partner with crowdsourcing projects like the OpenStreetMap community. We work with your team to find appropriate training data for the questions you want to answer. ![]() Skynet models are trained on data from the environment in which they will be used. These models often perform very poorly in other countries, where roads and buildings have different design and composition. Most machine learning algorithms are based on data from the US and Europe, where you can easily find rich training data and deep archives of high-resolution imagery. left column: input image, Goma, Democratic Republic of the Congo © DigitalGlobe middle: OpenStreetMap data right: Skynet model prediction Skynet models perform better in developing countries, because they are trained there. Skynet includes a suite of tools that make outputs and predictions useful for decisionmakers. We’ve extended this framework for use with satellite and drone imagery. At the core of Skynet is SegNet, a best-of-breed machine learning framework for analyzing the contents of photographs. Skynet detects patterns that allow it to identify and evaluate features in a given image. We built Skynet to unlock the data in these images. Hundreds of satellites constantly photograph the earth, providing tremendous insight into our changing planet and populations. ![]() We are experimenting with using Skynet to detect electricity infrastructure, locate schools, and evaluate crop performance. Our partners use Skynet to reliably extract roads and buildings from images that NASA, ESA, and private satellites and drones record daily. It quickly scans vast archives of satellite and drone imagery and delivers usable insights to decisionmakers. Monthly cost for OCR SKU: 1000 contracts x (50 pages/contract) x ($1/1000) images = $50 Receipt processingĮxtract text and key-value pairs from approximately 50,000 receipts per month to complete returns, with each receipt at 1 page long.Skynet is our machine learning platform. Monthly custom image analysis: 30,000 images x ($0.25/1000) images=$7.5Įxtract terms and timing schedule for commitments from 1000 contracts per month, with each contract at approximately 50 pages. ![]() Initial training: 2 hours x ($1.5/hour) = $3 Train custom object detection model for two hours, and review 1,000 images a day (approximately 30,000 images per month) to look for potential defects. OCI Vision monthly pricing examples General digital asset managementĬlassify one million images, with an average of 100,000 new images added each month. Localize where particular objects are in a scene or classify the entire image. Automate the detection of defective materials to flag the need for repairs.ĭetect whether vegetation is growing in the surveillance image of a power line or if trucks are available at a lot for delivery by locating objects and entire scenes in images. Easily retrieve images for uses ranging from intelligent search to retail management.Ĭlassify products or equipment as standard or defective based on visual appearance, such as discoloration, tear, rust, deformity, or breaks. Combine visual information from images with additional inputs, such as product sales history and customer reviews to gain a holistic sense of trends, such as product availability and popularity.Ĭlassify documents, detect tables, and extract required information from documents, such as receipts, to automate business workflows, including employee expense reporting, spending compliance, customer loyalty programs, and reimbursement.Įnrich image-based files with metadata, including document type, text, and objects for better indexing and retrieval in a digital asset management system or larger data warehouse. ![]() Automatically extract textual or visual information from images and use that to power analytic applications. ![]()
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