Using AI-Generated Product Image Recognition

ผลบอลสด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” width=”303px” alt=”image recognition using ai”/>

Next we need to convert the image into computer readable text so that verification can be performed. We use Optical Character recognition to extract useful information from the ID card (OCR). OCR is the process of extracting texts from images such as scanned documents or other type of photos with written texts.

After that, all the tags were classified, algorithms programmed to determine rendered photos were launched. These help us improve our services by providing analytical data on how users use this site. The first identifies almost a thousand different bird species using still images, then using the Pi Camera module supplied with the kit we perform object recognition in a video stream.

integrate Image Recognition AI Software with your operations

Once familiar with the software included in the kit, we recommend heading over to the Coral example pages where the latest projects are being added. There you’ll find further demonstration projects and information on building and training your own ML apps to run on Coral. The OKdo kit contains everything you need including the camera module to start exploring machine learning. It comes with several working examples already installed on the included SD card, to give you a fast start. It is also used in self-driving cars, autonomous robots and for adding meta-tags to images. If machine learning and AI intrigue you and you want to learn more, check out our collection of resources on the topic.

Questions every VC needs to ask about every AI startup’s tech stack – TechCrunch

Questions every VC needs to ask about every AI startup’s tech stack.

Posted: Mon, 18 Sep 2023 20:01:19 GMT [source]

Artificial Intelligence (AI) is a technology that possesses human-like abilities such as learning, decision-making, speech recognition, or facial recognition. AI is capable of performing tasks that are similar to those performed by humans. Furthermore, the capacity of ChatGPT to generate these ideas points to the promise that large language models hold as tools for ideation and problem-solving. The integration of Artificial Intelligence into geospatial technology brings a new era of solutions and services. We are beginning to see documented cases of physicians using these AI algorithms to detect the presence of rare and compromising diseases in children.

Insights

After all, even humans may visualise objects better when those objects are viewed in their correct context. As a Frontiers paper explains, people are more likely to recognise a sandcastle on a beach than a sandcastle on a football field. Because our functionality includes user-defined information, you combine machine learning with human knowledge. Your team’s hands-on experience and intimate understanding of the products provide valuable input that makes it easier for our AI to differentiate attributes when they are too similar, to increase accuracy. Also, every time your team confirms accuracy, you increase the AI’s machine-learning knowledge.

Use of the system after launch can reveal unintentional, unfair blind spots that are difficult to predict. The AI software, called ZenBrain, analyses the sensor data, creating an accurate real-time analysis of the waste stream. Based on this analysis, the heavy-duty robots make autonomous decisions on which objects to pick, separating the waste fractions quickly with high precision.

Only a professional team can give you an exact price for your future application, but the following factors could still guide you on a ballpark figure right now. The MyEye 2.0 builds on the previous model for blind people, offering a more discreet and portable device with no wires. It currently costs around £3,000, but the creators say they are hoping funders will come forward so the devices can be provided at a cheaper cost or for free.

Currently, the system requires manually labelled images to train the AI algorithms. An example is the voice assistant such as Siri, Alexa or Google Assistant – which needs to be able to understand speech and respond with a sensible answer or action. However, in order to effectively train the algorithm and adjust the input data accordingly, humans need to know what type of questions they expect it to be asked and what a sensible response would be. The https://www.metadialog.com/ lifecycle of AI development typically follows a process of data collection and ‘engineering’, algorithm development using the engineered data, and refinement as the data input is tweaked to achieve the expected outcome. Once the expected outcomes have been achieved to an acceptable level, decisions can be made based on the algorithms output. As the quality of the data improves over time, the quality of the algorithms output will also increase.

Cell deformability heterogeneity recognition by unsupervised machine learning from in-flow motion parameters

Computer vision and machine vision Computer vision (CV) involves software that analyses a multitude of visual stimuli, such as those that may be digitally scrutinised on a screen or page. Due to the level of data processing demands, these CV systems must be programmed, not only to carry out object detection – but both object recognition and object classification. Artificial image recognition using ai intelligence applications, in particular, deep learning techniques, that underpin image recognition are transforming society. They are now widely used in image analysis for a wide range of applications requiring object segmentation, classification, and recognition. The project began by collecting photographs of the client’s products on supermarket shelves.

https://www.metadialog.com/

Airlines and airports have started using facial recognition technology to enhance the check-in and boarding experience for their customers. It can begin connecting images that might not have the same classifiers but look similar. Or we can use to suggest similar images for a specific user, such as recommendations of similar styles. This system could be implemented into the main website to not only save employee time, but also to improve the customer experience.

We have experience in building event detection and classification models as well as extracting entities from the text. By chaining those functionalities together, some truly amazing things can be achieved. For example, satellite constellation operators often have an option for their satellites to be tasked to monitor specified areas. They can watch social media feeds and news outlets in order to pre-task the satellites to start image acquisition as soon as a major event is mentioned in the media. This ranges from natural disasters and military operations to large-scale public events. By leveraging NLP in this way, they can acquire the data before anyone even asks for it, which would give them an advantage in the market.

How accurate is AI OCR?

Good OCR accuracy: CER 1-2% (i.e. 98-99% accurate) Average OCR accuracy: CER 2-10% Poor OCR accuracy: CER > 10% (i.e. below 90% accurate)

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