packaging
Google's emissions up 51% as AI electricity demand derails efforts to go green
Google's carbon emissions have soared by 51% since 2019 as artificial intelligence hampers the tech company's efforts to go green. While the corporation has invested in renewable energy and carbon removal technology, it has failed to curb its scope 3 emissions, which are those further down the supply chain, and are in large part influenced by a growth in datacentre capacity required to power artificial intelligence. The company reported a 27% increase in year-on-year electricity consumption as it struggles to decarbonise as quickly as its energy needs increase. Datacentres play a crucial role in training and operating the models that underpin AI models such as Google's Gemini and OpenAI's GPT-4, which powers the ChatGPT chatbot. The International Energy Agency estimates that datacentres' total electricity consumption could double from 2022 levels to 1,000TWh (terawatt hours) in 2026, approximately Japan's level of electricity demand.
- Energy > Renewable (1.00)
- Energy > Power Industry > Utilities (0.32)
Experimental Study on Automatically Assembling Custom Catering Packages With a 3-DOF Delta Robot Using Deep Learning Methods
Yourdkhani, Reihaneh, Tavoosian, Arash, Khomami, Navid Asadi, Masouleh, Mehdi Tale
This paper introduces a pioneering experimental study on the automated packing of a catering package using a two-fingered gripper affixed to a 3-degree-of-freedom Delta parallel robot. A distinctive contribution lies in the application of a deep learning approach to tackle this challenge. A custom dataset, comprising 1,500 images, is meticulously curated for this endeavor, representing a noteworthy initiative as the first dataset focusing on Persian-manufactured products. The study employs the YOLOV5 model for object detection, followed by segmentation using the FastSAM model. Subsequently, rotation angle calculation is facilitated with segmentation masks, and a rotated rectangle encapsulating the object is generated. This rectangle forms the basis for calculating two grasp points using a novel geometrical approach involving eigenvectors. An extensive experimental study validates the proposed model, where all pertinent information is seamlessly transmitted to the 3-DOF Delta parallel robot. The proposed algorithm ensures real-time detection, calibration, and the fully autonomous packing process of a catering package, boasting an impressive over 80\% success rate in automatic grasping. This study marks a significant stride in advancing the capabilities of robotic systems for practical applications in packaging automation.
- Asia > Middle East > Iran > Tehran Province > Tehran (0.04)
- Africa > Eswatini > Manzini > Manzini (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.81)
Vision-based Manipulation of Transparent Plastic Bags in Industrial Setups
Adetunji, F., Karukayil, A., Samant, P., Shabana, S., Varghese, F., Upadhyay, U., Yadav, R. A., Partridge, A., Pendleton, E., Plant, R., Petillot, Y., Koskinopoulou, M.
This paper addresses the challenges of vision-based manipulation for autonomous cutting and unpacking of transparent plastic bags in industrial setups, aligning with the Industry 4.0 paradigm. Industry 4.0, driven by data, connectivity, analytics, and robotics, promises enhanced accessibility and sustainability throughout the value chain. The integration of autonomous systems, including collaborative robots (cobots), into industrial processes is pivotal for efficiency and safety. The proposed solution employs advanced Machine Learning algorithms, particularly Convolutional Neural Networks (CNNs), to identify transparent plastic bags under varying lighting and background conditions. Tracking algorithms and depth sensing technologies are utilized for 3D spatial awareness during pick and placement. The system addresses challenges in grasping and manipulation, considering optimal points, compliance control with vacuum gripping technology, and real-time automation for safe interaction in dynamic environments. The system's successful testing and validation in the lab with the FRANKA robot arm, showcases its potential for widespread industrial applications, while demonstrating effectiveness in automating the unpacking and cutting of transparent plastic bags for an 8-stack bulk-loader based on specific requirements and rigorous testing.
- Workflow (0.69)
- Research Report (0.64)
Creation and Evaluation of a Food Product Image Dataset for Product Property Extraction
Brosch, Christoph, Bouwens, Alexander, Bast, Sebastian, Haab, Swen, Krieger, Rolf
The enormous progress in the field of artificial intelligence (AI) enables retail companies to automate their processes and thus to save costs. Thereby, many AI-based automation approaches are based on machine learning and computer vision. The realization of such approaches requires high-quality training data. In this paper, we describe the creation process of an annotated dataset that contains 1,034 images of single food products, taken under studio conditions, annotated with 5 class labels and 30 object detection labels, which can be used for product recognition and classification tasks. We based all images and labels on standards presented by GS1, a global non-profit organisation. The objective of our work is to support the development of machine learning models in the retail domain and to provide a reference process for creating the necessary training data.
- Europe > Germany (0.14)
- Europe > Netherlands (0.05)
- North America > United States > Nevada > Clark County > Las Vegas (0.04)
- Europe > Greece > Ionian Islands > Corfu (0.04)
- Retail (1.00)
- Consumer Products & Services > Food, Beverage, Tobacco & Cannabis (1.00)
Brand Visibility in Packaging: A Deep Learning Approach for Logo Detection, Saliency-Map Prediction, and Logo Placement Analysis
Hosseini, Alireza, Hooshanfar, Kiana, Omrani, Pouria, Toosi, Reza, Toosi, Ramin, Ebrahimian, Zahra, Akhaee, Mohammad Ali
In the highly competitive area of product marketing, the visibility of brand logos on packaging plays a crucial role in shaping consumer perception, directly influencing the success of the product. This paper introduces a comprehensive framework to measure the brand logo's attention on a packaging design. The proposed method consists of three steps. The first step leverages YOLOv8 for precise logo detection across prominent datasets, FoodLogoDet-1500 and LogoDet-3K. The second step involves modeling the user's visual attention with a novel saliency prediction model tailored for the packaging context. The proposed saliency model combines the visual elements with text maps employing a transformers-based architecture to predict user attention maps. In the third step, by integrating logo detection with a saliency map generation, the framework provides a comprehensive brand attention score. The effectiveness of the proposed method is assessed module by module, ensuring a thorough evaluation of each component. Comparing logo detection and saliency map prediction with state-of-the-art models shows the superiority of the proposed methods. To investigate the robustness of the proposed brand attention score, we collected a unique dataset to examine previous psychophysical hypotheses related to brand visibility. the results show that the brand attention score is in line with all previous studies. Also, we introduced seven new hypotheses to check the impact of position, orientation, presence of person, and other visual elements on brand attention. This research marks a significant stride in the intersection of cognitive psychology, computer vision, and marketing, paving the way for advanced, consumer-centric packaging designs.
- Asia > Middle East > Iran > Tehran Province > Tehran (0.04)
- North America > Mexico > Puebla (0.04)
- Europe > Italy > Apulia > Bari (0.04)
- (3 more...)
- Health & Medicine (0.68)
- Marketing (0.46)
The beer of the future? MailOnline tastes one of the world's first beers designed by AI
It seems the usefulness of ChatGPT knows no bounds as even brewers are using the tool to make new beer. German brand Beck's is one of a number of companies to have turned to the clever AI chatbot to make a futuristic beverage, called Beck's Autonomous. ChatGPT not only came up with the beer's recipe but also its packaging, name, advertising campaign and even a design for the beer's website. Beck's is the first commercial brewery to work with ChatGPT, although other independent brew houses in North America have already done the same. MailOnline gave Beck's Autonomous a try to see how it compares with the brand's flagship lager.
- Europe > Germany > Bremen > Bremen (0.05)
- North America > Canada > British Columbia > Vancouver Island > Capital Regional District > Victoria (0.05)
- Asia > India (0.05)
- Africa (0.05)
Apple Watch Series 9 will have new 'hand gestures' feature that can be controlled WITHOUT touch - and will be company's first ever carbon-neutral gadget
The newly unveiled updated Apple Watch Series 9 will be Apple's first-ever carbon neutral gadget that requires a simple tap of two fingers to work. The device, which will become available on September 22, was also made using renewable materials and clean energy, leading to a 75 percent decrease in the amount of carbon waste emitted. And for the first time, users will be able to control the watch simply by tapping together the index finger and thumb on their watch hand. The Series 9 will start at $399 while the Apple Watch SE will run you $249. The Ultra 2 model will set you back $799.
- North America > United States > California > Santa Clara County > Cupertino (0.06)
- Africa (0.06)
- Energy > Renewable (0.52)
- Materials > Metals & Mining > Cobalt (0.32)
Machine learning helps researchers separate compostable from conventional plastic waste
Disposable plastics are everywhere: Food containers, coffee cups, plastic bags. Some of these plastics, called compostable plastics, can be engineered to biodegrade under controlled conditions. However, they often look identical to conventional plastics, get recycled incorrectly and, as a result, contaminate plastic waste streams and reduce recycling efficiency. Similarly, recyclable plastics are often mistaken for compostable ones, resulting in polluted compost. Researchers at University College London (UCL) have published a paper in Frontiers in Sustainability in which they used machine learning to automatically sort different types of compostable and biodegradable plastics and differentiate them from conventional plastics.
- Materials (0.80)
- Water & Waste Management > Solid Waste Management (0.75)
21 ways to make money with ChatGPT BEFORE TIME RUNS OUT!
Create chatbot conversations for businesses: Many businesses are turning to chatbots to improve customer service and increase sales. With ChatGPT, you can create personalized chatbot conversations for these businesses, helping them to connect with their customers in a more meaningful way. Generate articles for online publications: If you're a skilled writer, you can use ChatGPT to generate unique and engaging articles for online publications. This is a great way to earn money while also showcasing your writing skills. Simply choose a topic, input your desired tone and style, and let ChatGPT do the rest.
Italian scientists come up with a way to keep pasta fresh for an extra month
Real Italian pasta can take a lot of effort to knead, shape and cook until it is perfectly al dente. So it is unsurprising that Italian researchers were desperate to make it last longer before needing to be thrown away. A scientific team from Italy took months developing the perfect technique to make pasta last 30 days longer. The solution involves storing the pasta in the perfect atmosphere to prevent bacterial growth and adding probiotics to the flour. Flat-pack pasta which only takes on its iconic shape after cooking has been created by scientists.
- Europe > Italy (0.29)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.06)