AWS Machine Learning Blog
Category: HAQM Lookout for Vision
Exploring alternatives and seamlessly migrating data from HAQM Lookout for Vision
In this post we discuss how you can maintain access to Lookout for Vision after it is closed to new customers, some alternatives to Lookout for Vision, and how you can export your data from Lookout for Vision to migrate to an alternate solution.
Image augmentation pipeline for HAQM Lookout for Vision
HAQM Lookout for Vision provides a machine learning (ML)-based anomaly detection service to identify normal images (i.e., images of objects without defects) vs anomalous images (i.e., images of objects with defects), types of anomalies (e.g., missing piece), and the location of these anomalies. Therefore, Lookout for Vision is popular among customers that look for automated […]
Identify the location of anomalies using HAQM Lookout for Vision at the edge without using a GPU
Automated defect detection using computer vision helps improve quality and lower the cost of inspection. Defect detection involves identifying the presence of a defect, classifying types of defects, and identifying where the defects are located. Many manufacturing processes require detection at a low latency, with limited compute resources, and with limited connectivity. HAQM Lookout for […]
Computer vision-based anomaly detection using HAQM Lookout for Vision and AWS Panorama
July 2023: This post was reviewed for accuracy. This is the second post in the two-part series on how Tyson Foods Inc., is using computer vision applications at the edge to automate industrial processes inside their meat processing plants. In Part 1, we discussed an inventory counting application at packaging lines built with HAQM SageMaker […]
HAQM Lookout for Vision now supports visual inspection of product defects at the edge
Discrete and continuous manufacturing lines generate a high volume of products at low latency, ranging from milliseconds to a few seconds. To identify defects at the same throughput of production, camera streams of images must be processed at low latency. Additionally, factories may have low network bandwidth or intermittent cloud connectivity. In such scenarios, you […]
Detect defects in automotive parts with HAQM Lookout for Vision and HAQM SageMaker
According to a recent study, defective products cost industries over $2 billion from 2012–2017. Defect detection within manufacturing is an important business use case, especially in high-value product industries like the automotive industry. This allows for early diagnosis of anomalies to improve production line efficacy and product quality, and saves capital costs. Although advanced anomaly […]
Calculate inference units for HAQM Rekognition Custom Labels and HAQM Lookout for Vision models
HAQM Rekognition Custom Labels allows you to extend the object and scene detection capabilities of HAQM Rekognition to extract information from images that is uniquely helpful to your business. For example, you can find your logo in social media posts, identify your products on store shelves, classify machine parts in an assembly line, distinguish healthy […]
Detect defects and augment predictions using HAQM Lookout for Vision and HAQM A2I
With machine learning (ML), more powerful technologies have become available that can automate the task of detecting visual anomalies in a product. However, implementing such ML solutions is time-consuming and expensive because it involves managing and setting up complex infrastructure and having the right ML skills. Furthermore, ML applications need human oversight to ensure accuracy […]
Defect detection and classification in manufacturing using HAQM Lookout for Vision and HAQM Rekognition Custom Labels
Defect detection during manufacturing processes is a vital step to ensure product quality. The timely detection of faults or defects and taking appropriate actions are essential to reduce operational and quality-related costs. According to Aberdeen’s research, “Many organizations will have true quality-related costs as high as 15 to 20 percent of sales revenue.” The current […]
Detect manufacturing defects in real time using HAQM Lookout for Vision
In this post, we look at how we can automate the detection of anomalies in a manufactured product using HAQM Lookout for Vision. Using HAQM Lookout for Vision, you can notify operators in real time when defects are detected, provide dashboards for monitoring the workload, and get visual insights from the process for business users. […]