Industrial AI Solution Catalog
Explore 500+ ready-to-go AI solutions (with more to come) across diverse use cases, and find the perfect fit for your project.
Popular Categories
The In-Sight 3D-L4000's unique optical scanning engine also offers several advantages over other competing solutions, including eye-safe operation, while providing more light to the surface to increase throughput, providing more accurate 3D point clouds for measurement values, and even 100% of the In-Sight 3D-L4000's field of view can be measured even if debris blocks 50% of the laser.
Cognex In-Sight vision systems with deep learning OCR solutions can confirm that lids and containers match each other and accurately reflect the contents of the package, as well as confirm that labels comply with internal procedures and quality standards enforced by regulatory agencies. Cognex technology ensures high-speed reading and decoding of barcodes and text in the most demanding environments.
Cognex Deep Learning is ideal for visually inspecting containers for defects before they are sealed and shipped. The defect detection tool can be trained on a small set of images of cartons properly filled with the correct number of tea bags. The defect detection tool can then identify any anomalies in the carton, including misalignment, quantity, orientation, or errors in visible strings and labels. The identified cartons can then be sent back to correct the errors and repackaged.
Cognex In-Sight 2800 provides user-friendly and cost-effective solutions for tobacco manufacturers conducting crucial inspections, featuring Edge, Contrast, Color, Pixel Count tools to pinpoint fiscal stamp attributes and relay pass/fail results to programmable logic controllers (PLC). Integrated lighting facilitates necessary contrast for luminous and low-contrast features, ensuring precise assessment of test subjects inline at production rates. Avoidance of rework, exorbitantly priced waste, and unnecessary returns ensues. Seamless setup and maintenance integrate In-Sight Explorer Software and EasyBuilder configuration environments.
By using the In-Sight vision system, food and beverage manufacturers can ensure that labels are placed in the correct position on the product and avoid product recalls due to quality issues or damage to brand reputation. Similarly, automated inspection can identify incorrect labels before they cause further problems along the supply chain due to misaligned labels. Label alignment inspection can be used in conjunction with optical character recognition (OCR) and other In-Sight vision tools to ensure overall label readability and compliance.
- Cognex Deep Learning is ideal for the complex task of finding and picking good nuts that are oriented correctly and placing them on chocolate.
- The classification tool is trained on a set of images of good and bad nuts. The tool can quickly classify nuts into acceptable and unacceptable categories.
- The part location tool is trained on a set of images of good nuts that are oriented correctly. It can then locate the nuts as they pass by, regardless of the number of nuts present at the same time.
- Combining these tools ensures that good nuts are identified and located so that they can be picked and placed on the chocolate by a robotic arm. Manual inspection or other forms of machine vision cannot achieve the same speed and accuracy for this task.
Cognex robust modular In-Sight 7800 series machine vision systems tackle this application using multiple tools (histograms, edges, etc.) complemented by externally mounted linear lights above mouthpieces. In-Sight 7800 detects contrast disparities between mouthpiece and filter paper, validating presence and proper placement. Edged tools scrutinize recessed mouthpiece tail ends for incisions, segregating rejects from fast-paced production lines. Efficient installation follows suit, accompanied by simple configuration enabled via In-Sight Resource Manager software. Network-enabled Human-Machine Interfaces monitor test outcomes remotely.
Cognex Deep Learning can read printed barcodes on difficult backgrounds. With a pre-trained font library, the deep learning OCR tool is easy to set up and deploy. It can then be trained on a small set of images of text printed on a variety of backgrounds, and it learns to identify the text while ignoring the background. This is even the case when the text appears on new backgrounds that were not in the original training set. When text appears on a new background, the OCR tool does not need to be retrained, which keeps the production line running without interruption or loss of read accuracy.
Cognex Deep Learning can read printed OCR codes on flexible plastic film, which are not only difficult to read, but the background can also vary due to many different cut parts or chicken. The deep learning OCR tool comes with a pre-trained font library, making it easy to set up and deploy. The OCR tool is trained on a small set of images of text that is skewed, angled, and distorted. After that, it can find and read this type of text on flexible food packaging, regardless of the product underneath the packaging.
Cognex Deep Learning can solve the orientation problem of liquid filling bags and other flexible containers during packaging and transportation. It can be trained on a set of images of possible containers with different orientation labels. The classification tool can accurately determine the orientation of each bag seen and provide the data to the picking and placing robots, which then pick and place them in the correct orientation in the secondary packaging containers.
Four AVT Prosilica GC1290C cameras are used to inspect raisins and sort them by appearance and size before packing them in boxes.
Cognex PatMax technology and color tools can identify designs and stamps, regardless of changes in direction, angle, lighting, and other factors that can affect the appearance of items on the production line. PatMax uses a set of boundary curves to learn the geometric shape of an object and then searches for similar shapes in the image, without relying on specific grayscale values. Damaged or broken products are removed before being packaged or shipped, avoiding costly returns and protecting brand reputation.
Cognex In-Sight 2800 Series Smart Cameras fit neatly into confined quarters of tobacco manufacturer gear. Mounted above hopper bins, In-Sight 2800 sports embedded high-powered lighting rigs, distinguishing loose tobacco apart from pouches. Surface Flaw Tools match perfectly with Filter Program Tools, highlighting luminosity and contrast discrepancies indicative of perforated states especially handy for similarly colored brown tobaccos. Dependably inspecting vessel contents, In-Sight 2800 removes faulty chewing tobacco packs prior to reaching consumers' hands.
Traceability solutions ensure full compliance with food safety and traceability regulations by capturing images of codes at each scanning point and storing the decoded data in a central database. Cognex barcode readers can reliably read 1D and 2D bar code images with a 99.9% read rate, regardless of code quality or orientation. Image-based readers offer the speed and accuracy needed to ensure that all shapes and sizes of packages are properly sorted, picked, stored or shipped, and easily identified and located in the event of a product recall. In-Sight vision systems use AI-based OCR tools to read alphanumeric date/lot codes and store the information in a central database that can track and trace products throughout the supply chain.
Cognex 2D vision systems with edge learning perform pass/fail inspection and reject defective items or packages when detected. The embedded edge learning tool can be trained with just a few images that classify packages as pass (all items present) and fail (one or more items missing). Even under shrink wrap, it can confirm that all bottles and products are present, helping food and beverage manufacturers prevent operational errors and maintain customer satisfaction.
Matrox MIL10 SureDotOCR™ character recognition tool is specially developed for challenging dot matrix text printed by inkjet and dot printers. It can be calibrated according to the specified dot size, and can be used for text distortion, uneven background and different light conditions. Recognition.
With simple drag-and-drop modules, you can easily create flowcharts to guide the arm for sorting and packaging.
Using the blob counting tool, the In-Sight 2000 sensor can detect the presence or absence of relevant liquids. When the bottle is underfilled, there will be too few blobs displayed, and when the bottle is overfilled, there will be too many. Bottles that fail the inspection will trigger the rejection function.
The In-Sight vision system, combined with feature extraction technology, uses lighting and software algorithms to create high-contrast images that enhance the three-dimensional features of components. It can capture errors and defects such as torn, cracked or deformed labels. Monochrome and color models can identify color errors and inspect the consistency and quality of labels in terms of size, shape, color and material. This quality control measure can reduce errors, help meet label quality standards and ensure customer satisfaction.
Cognex Deep Learning can easily confirm the presence and absence of straws without damage. It can be trained on a small set of images of undamaged straws, as well as a set of images of various unacceptable missing, damaged, or misplaced straws. The classification tool learns to ignore any background and classifies all images into acceptable or unacceptable states. Since there is no need to identify and define specific defects, the classification process is very fast. It only needs to judge acceptable/unacceptable.
Cognex Deep Learning can reliably detect these types of products to prevent defective items from reaching customers. It is trained on a set of images of good items and another set of images of items with various types of coating damage. The classification tool can then quickly classify chewing gum or other items into acceptable and unacceptable categories. This level of quality cannot be achieved with other types of visual inspection.
The software can quickly locate and read solid text in images, and can tolerate a certain degree of tilt and contrast changes. It is flexible enough to overcome the problem of character building and background blur. On the other hand, if the text is clear enough, String reader will perform the detection, and if the text is accidentally covered, Matrox DA can also automatically switch to the existence/non-existence inspection mode, which can effectively respond to changes in the production line.
Foreign objects such as rubber bands, plastic, wire, machine parts, bone fragments, and fish bones can be generated during the food production process. In addition to damaging the brand's reputation, food hygiene complaints may also result in huge compensation claims. Anko has partnered with a cross-domain company to launch a food X-ray inspection machine that is suitable for the food, pharmaceutical, and chemical industries. It can detect tiny contaminants that are difficult to identify with the naked eye, such as wire, stainless steel shavings, and plastic sheets. It also has the function of checking the quantity and defects of food.
Cognex Deep Learning can reliably identify foreign objects, invalid seals, contamination, and many other problems that can affect product integrity. 100% vision inspection can reduce operator error and achieve maximum efficiency. Deep learning can also further highlight problems in real time, allowing operators or machines to clearly identify problems, which can be classified later.
Cognex deep learning can instantly locate, analyze, and classify complex contamination issues, preventing large-scale production line contaminants from entering the supply chain. Deep learning combines human-like detection capabilities with the automation, scalability, and repeatability of a computerized system. This capability can be further enhanced by using robots to ensure that machines work together with vision tools to detect the most complex anomalies that operators sometimes miss. The end result is a reduction in recalls, reduced rework costs, and complete product image capture and full traceability.
Cognex's In-Sight 9912 Visual System delivers automated solutions for each box complete with distinct labels, such as emblems, names, or numerical codes. Once cargo arrives near the camera, In-Sight 9912 utilizes PatMax object localization technology, instantly spotlighting selected marks or motifs prior to computing quantities contained therein. Its expansive field of view and optical arrangement make it ideally suited for massive crates and distant checkpoints. Displaying results on tablet computers or laptops, flatscreen monitors, or web-based HMIs empowers operators to review examination outcomes.
The compact yet powerful In-Sight 8000 vision system can detect e-cigarettes to help tobacco manufacturers ensure their products are free of harmful debris. The In-Sight 8402 can be easily mounted inside the machine with an external light bar to evenly illuminate the inspection area and check the filter. Since the region of interest is relatively small, reducing the field of view (FOV) of the vision system provides the 2MP In-Sight 8402 with the extra resolution needed to clearly identify defects while keeping up with high-speed machines. Like all In-Sight, the In-Sight 8000 series can be quickly and easily configured and deployed using In-Sight Explorer software with the intuitive EasyBuilder configuration environment.
- The component location tool can be trained on a small set of images of pizzas with the desired number of pepperoni slices or other toppings. It can then identify, locate, and count pepperoni slices, even if they are touching or overlapping, while ignoring variations in cheese and sauce underneath. If the number of toppings is not within the specified limits, the pizza will be rejected.
- The defect detection tool can be trained on a set of images of acceptable pizzas, even with multiple different toppings. It will then detect any physical contaminants, including toppings that are not suitable for this type of pizza, while ignoring variations in cheese and sauce underneath.
- The classification tool can be trained on a set of images of all types of pizzas produced in the factory, with labels. It can then distinguish between different variations and classify them so that they can be put into the appropriate packaging and accurately entered into inventory. These tools can be used all together to help manufacturers automate processed food inspection, ensuring that only the highest quality products leave the factory and end up on customers' kitchen tables.
By using the Segmentation technology of SolVision AI image platform, AI models are trained with image samples of bottle cap text and barcodes, and optical character recognition (OCR) is performed. This can accurately identify product information on the outer packaging in the high-speed beverage production line. In addition to detecting products with poor printing, it also greatly enhances the efficiency of traceability management and record retention on the production line.
- Full Chinese operation interface
- Quick adjustment page for product fine-tuning
- Statistical functions (total inspected/qualified/defective quantities)
- Defective image storage and classification
- Ability to adjust settings during inspection
- Complete rejection mechanism planning (low/medium/high speed, contact/non-contact type)
- Equipment can process up to 1200 pcs/minute at maximum speed
The In-Sight vision system, combined with OCRMax technology, can detect the presence or absence of dates and batch codes, and verify the correctness of their alphanumeric chains. For demanding OCR applications, including DPM text that is laser marked, dot peened or chemically etched, Cognex AI OCR tools ensure accurate reading and verification of barcodes. These tools can use OCR and character verification (OCV) to decode deformed, skewed and poorly etched characters. A pre-trained omnidirectional font library can recognize most text without the need to design additional programs or font training.
Many modern 3D vision solutions offer simple and easy-to-use blob, volume, and edge detection tools to solve complex food inspection applications. The In-Sight 3D-L4000 smart camera, combined with Cognex In-Sight software, streamlines the process and makes these tools easy to use in a familiar spreadsheet format. The In-Sight 3D-L4000 offers the highest quality 2K resolution and a patented, no-spot blue laser optical configuration that generates more accurate 3D point clouds for inline measurements. Because the In-Sight 3D-L4000 can generate a complete 3D point cloud, rather than just a height map above the surface, it can more accurately apply 3D blob tools to identify different, but touching, objects, such as cookies in a container. The In-Sight 3D-L4000 also offers a variety of true 3D algorithms for volume measurements, such as the distance between cylinders.
Cognex Deep Learning is ideal for detecting small, unpredictable defects. It is trained on a set of chocolate images that includes the full range of acceptable variations. The defect detection tool then flags any chocolate that falls outside of this range, regardless of the type of defect. These must all be removed to maintain quality standards.
Cognex Deep Learning is ideal for sorting coffee beans because it can quickly and easily identify different colors, sizes, and characteristics of coffee beans. It can be trained on a set of images of each type of coffee bean that is received in the warehouse. Even if different types of beans look very similar, the classification tool can distinguish between different types, while accepting natural variations within each type. The defect detection tool can identify any physical contaminants in a batch of coffee beans before they are sent for blending.
Cognex AI image analysis software is as reliable as human inspectors for detecting surface appearance defects, but with the speed of a computerized system. The defect detection tool can create reliable shape and texture models based on training images, and can find defects on rough materials even with poor image quality under standard lighting. It then identifies surface texture changes as anomalies, and then uses the classification tool to classify them as collisions or scratches. Continuously providing high-quality products to the market can improve customer satisfaction and improve brand loyalty.
Cognex's In-Sight 7800 Series Visual Systems boast exceptional accuracy in reading tax stamps' OCR codes, helping tobacco industry manufacturers comply with stringent regulations concerning cigarette taxes. Leveraging the PatMax Object Location Tool, In-Sight 7905 searches for and positions patterns on fiscals stamps, followed by Exposure Distribution Graph and OCR tools to locate characters and decode OCR codes. Operating flawlessly at minimal distances, In-Sight 7905 extracts and examines high-resolution, high-contrast images unaffected by deformation directly from high-speed printers.
Employing Histogram Tools, In-Sight 7800 examines representative signs of poor packaging, including uneven brightness and absence of brightness whilst installed behind exterior linear lights. Such arrangements facilitate high resolution, swift processing, and broad fields of view vital for monitoring the rapid movement of cigarette rolling devices surrounding assembly wheels. An incorporated pan-tilt housing safeguards against debris originating from tobacco production machinery. Additionally, protected by IP67-rated lens covers, In-Sight 7800 ensures durable functionality. Configurable using intuitive and easy-to-deploy In-Sight Manager software, integration with factory automation environments remains straightforward.
Cognex In-Sight 2000 sensors guarantee correct cutting according to specified parameters, leveraging Edge Detection Tools to find either end of cigarette filters and pinpoint the center point for cigar cuttings. Boasting compact designs fitting snuggly into tight spaces available within tobacco equipment, In-Sight 2000 integrates potent built-in lighting delivering essential illumination coupled with multiple wide-angle camera options providing expansive views at close working distance ranges, capturing high-resolution images.
Cognex In-Sight 2000 sensors offer superior performance for dual inspections where space constraints necessitate diminutive dimensions - measuring just 92 x 60 x 52 mm. Powerful integrated lighting configurations deliver high-contrast, high-resolution images even at close proximity, suitable for checking filter paper alignments and dot glue detections. Upon discovery of defects, sensor transmits findings to programmable logic controllers (PLCs) promptly halting machinery operations, preventing resource squandering and blockages in tobacco production machines.
Cognex Deep Learning calculates the number of mouthpieces housed within large shipping cartons entirely, tackling this demanding application head-on. Merging positional instruments located overhead with million-pixel cameras and parallel placements of strong external linear lights, this approach counts transport containers holding over four thousand mouthpieces. Trained using a modest group of sample images, Cognex Deep Learning distinguishes among various mouthpiece defect categories, including white carbon, activated charcoal, concave structures, and others, ensuring accurate enumeration regardless of mouthpiece dimension, hue, or form.
Cognex AI-driven technologies identify and classify tears or holes appearing on cigarette boxes, assisting in the detection of potential production concerns threatening product quality.
- Cognex Deep Learning software can perform multiple feature location and identification tasks on a single image. Cognex Deep Learning classifies and distinguishes the functional features of different chocolates based on size, shape, and surface features.
- Users can train the location tool to locate each type of chocolate that needs to be found. Users can create a database of different types of chocolates for the location tool to locate, and then the location tool can be used to perform packaging verification.
- After training, the image can be segmented into different regions, and the location tool will be able to detect the presence of chocolate in these regions and verify that the type of chocolate is correct. Multiple configurations can also be created for different packaging variations on a single production line. In this way, users can automate the chocolate packaging verification process with just one tool.
Machine vision solutions can measure the volume of food dispensed during product assembly to ensure food portioning. 3D displacement sensors provide highly accurate 3D volume measurements specifically designed for food portioning. 3D calibration allows manufacturers to set food portioning and cut points during processing to ensure that portions are uniform and consistent. Cognex 3D displacement sensors are factory calibrated to detect 3D food products. The Cognex 3D laser displacement sensor can scan the dimensions of individual portions to determine if the portion meets the pre-programmed specifications. Visual inspection and volume measurement can be performed after scanning.
Cognex vision systems use multidimensional imaging to verify cap height and tilt. In-Sight vision systems use edge detection technology to measure the distance between the top of the cap and the neck of the bottle, and the horizontal position of the top of the cap, to confirm that it meets the pre-defined limits. In this way, the vision system can determine whether the cap is screwed on tightly and is in a safe sealed state. Bottles that fail the cap height and tilt inspection will be rejected.
In addition to solving the original packaging direction and counting problems of the manufacturer, this vision inspection system also identifies many other errors, including: juice box skew, missing, crushed, dropped, rotated or redundant, missing products after whole box packaging , inverted or inverted, damaged labels, etc.
Using Solomon's core AI machine vision system SolVision, an AI model can quickly and accurately identify the direction and angle of each artichoke, using its stem as a reference point, regardless of the size of the stem itself. SolVision also allows AI detection results to be exported through various communication protocols.
- Cognex AI vision systems and software are effective solutions for meat quality inspection. They can be trained on a set of images of each labeled cut of meat or poultry. The classification tool then accepts a range of natural variations while accurately classifying each cut, ensuring it receives the proper grade so that the product can be sold at the highest reasonable price.
- Regardless of the source, whether from damaged packaging, machinery, or other sources, the defect detection tool quickly finds any physical contaminants and flags them before the product is shipped. This ensures that all shipped cuts are correctly classified and priced, leading to increased customer satisfaction and revenue.
Cognex machine vision conducts cigarette package assessments, supporting tobacco producers in averting sales of defective or empty packages. Installed adjacent to rotational rollers, In-Sight 7800 executes surveillance on rapidly shifting cellophane wraps, triggering cessation upon overwrap loss or tearing occurrences. Combining integrated lighting with white LED arrays, optimum system performance emerges naturally sans additional expenses linked to pricey auxiliary lighting sources. Applying distribution graphs and contrast settings within In-Sight Resource Manager software, In-Sight 7800 readily solves this particular application.
Solomon combines machine vision and artificial intelligence to use the Segmentation technology of Solomon SolVision AI image platform to perform defect detection (Defect Identification). In the fast and mass production of fried food processing line, it can identify multiple different defect patterns and instantly detect defective products.
- The Cognex In-Sight 3D-L4000, combined with In-Sight software and 3D vision tools, can quickly complete metal can quality inspection, reduce rework and improve productivity.
- Both 2D and 3D vision are based on point cloud measurements, not just height maps. The In-Sight 3D-L4000 can measure the distance between blobs and features for advanced machine vision applications, achieving higher accuracy than traditional laser scanning solutions. Due to its advanced optical design and the ability to easily program in the In-Sight software environment, which includes 3D edge finding, 3D blob analysis, plane finding and many other functions, it also offers other advantages such as superior performance and safety.