1~10 item / All 10 items
Displayed results
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationContact this company
Contact Us OnlineBefore making an inquiry
Download PDF1~10 item / All 10 items
We developed an application that operates on ROS, integrating LiDAR-SLAM for mapping, self-localization, and underground data measurement devices. This application enables accurate understanding of the measurement information from underground data measurement devices in relation to the surface, and allows for visual recording of the surrounding environment. Additionally, by using ROS (Robot Operating System), we successfully facilitated smooth data transmission and reception, coordinate transformation, and sensor information output between various sensors and devices. [Development Example] - OS: Ubuntu 16.04 LTS - Development Period: 1 year - Number of Developers: 3 - Programming Languages: C++, Python - Framework Used: ROS - Related Technology: Point Cloud Matching *For more details, please refer to the PDF document or feel free to contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationThe diagnosis of eye diseases is progressing daily, but the information from biological tissues is not necessarily sufficient, and there are limitations in understanding the pathological conditions. In this development, we are collaborating with inspection device manufacturers to obtain new tissue characteristic information, and we are using advanced technologies such as Deep Learning and GPGPU to maximize the use of that information, demonstrating means to understand pathological conditions from multiple perspectives and addressing this issue. In conventional methods, it took about one hour to compute data from a single examination, but we have successfully re-implemented this computation on GPGPU, reducing the time to approximately five minutes. [Development Example] ■ OS: Windows 10 ■ Development Period: 5 years ■ Number of Developers: 3 ■ Development Languages: Qt, C++, Python ■ Networks Used: DeepLabV2, V3 *For more details, please refer to the PDF document or feel free to contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationTo put technologies such as object detection using Deep Learning into practical use, systematization is essential. At our company, in addition to Deep Learning, we have proposed software based on the hardware control and communication technologies we have cultivated so far. Furthermore, we provide all the elements necessary for systematization in a one-stop manner, including the selection of hardware such as cameras suitable for the system. [Development Example] ■ OS: Windows, Linux ■ Development Period: PoC 3 months, Development 4 months (prototype) ■ Number of Developers: 3 people ■ Development Languages: C#, C++ ■ Network Used: YOLO v4 tiny *For more details, please refer to the PDF materials or feel free to contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationOur company has successfully detected a large number of foreign objects that were previously missed by applying Deep Learning object detection technology to images captured by inspection devices. In image processing, it is common to handle complex processing steps sequentially, which can lead to longer processing times per inspection, ultimately affecting overall production efficiency. With this technology, we have achieved high-speed inspections of approximately 100ms or less per inspection (per image), allowing us to improve inspection accuracy without compromising production efficiency. [Development Example] - OS: Windows 10 Pro - Development Period: 6 months - Number of Developers: 2 - Programming Languages: C#, C++, Python - Networks Used: SSD, Yolov3 *For more details, please refer to the PDF document or feel free to contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationImage recognition technology using Deep Learning is expected to be applied in visual inspection in industries such as manufacturing due to its high detection performance and generalization capabilities. Our company has achieved results in defect detection using object detection with Deep Learning through a Proof of Concept (PoC) in an automation project for sanitary ware visual inspection with LIXIL. We are currently advancing towards trial operations for line implementation. Regarding this development initiative, we presented jointly with LIXIL at the Interactive Session of the 2020 Annual Conference of the Japanese Society for Artificial Intelligence. [Development Example] ■ OS: Windows 10 Pro ■ Development Period: 2018 onwards ■ Number of Developers: 1 for PoC / 2 for main development (planned) ■ Development Languages: C#, Python ■ Network Used: SSD512 (VGG16) *For more details, please refer to the PDF document or feel free to contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationMany people are considering the application of AI technology to visual inspection (quality control). Here are the key points for utilizing AI in visual inspection. ◆ Benefits after implementation ・Reduction of labor costs ・Improvement of production efficiency ・Standardization of judgment criteria ・Increase in detection rates ◆ Challenges when implementing ・Difficulties in establishing imaging conditions ・Challenges in clarifying judgment criteria ・Uncertainty about whether AI can detect certain issues ・Regular usage fees may be incurred depending on the AI vendor ◆ Solutions with DeepEye! ・Achieves a low price of 980,000 yen ・One-time payment model, so the payment amount is fixed regardless of usage ・Offers a 2-week free rental period, allowing for evaluation and consideration.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationI will introduce successful development when requesting from an AI vendor. 1. Goals and processes are specific. Development with clearly defined goals, such as "I want to automate the □ task of the △ line of the XX product," and a clear process tends to be successful. 2. The data acquisition environment is well-established. The purity of the data has a significant impact on the development results. Therefore, if the data acquisition environment is well-established, the success rate can be said to be high. 3. AI is perceived as part of the system. It is important to view AI as a means to solve needs and to consider the usage environment. While I have introduced these three points, it can be difficult for customers to implement the above on their own. By using our "DeepEye," it is possible to easily engage in AI development. - It is a one-time purchase model, making budgeting easier. - Even if it is unclear whether AI can be applied, it can be verified multiple times. - Even if there are many issues, the cost remains the same. Additionally, our company also provides AI consulting, and we have a support system in place to help solve our customers' challenges.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationIn recent years, tools and services that allow for the easy creation of Deep Learning models have been made available. With this ease of access, there may already be individuals who have begun developing Deep Learning models. The next challenge after creating a Deep Learning model is "improving accuracy." When the expected accuracy is not achieved, implementing the following can lead to performance improvements: 1. Changing various hyperparameters 2. Increasing the amount of training data 3. Increasing the "patterns" in the training data. For example, differences in lighting brightness, size, and speed 4. Performing preprocessing to clarify the features of the data 5. Comparing and considering multiple types of models to use 6. Reviewing the class design of the model 7. Building an ensemble model that combines multiple models However, carrying out these tasks requires specialized knowledge, as well as time and effort to prepare the data. By using our "DeepEye," you can easily implement these accuracy improvement strategies.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationAn all-in-one package PC capable of image classification and object detection using Deep Learning technology. - No detailed knowledge of Deep Learning is required. - No preparation or knowledge of the operating environment for Deep Learning (Linux) is necessary. - With a user-friendly GUI, you can easily perform a series of processes such as creating training data, building learning models, and executing inference, allowing for repeated verification within your company.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registrationWe propose solutions to improve productivity through the introduction of "deep learning," one of the machine learning methods. By creating a box that performs calculations from the input layer to the output layer using a network modeled after the structure of the brain's neural transmission network, we can achieve our objectives by adjusting the parameters used during the calculations. Additionally, even in cases where the model cannot be expressed in mathematical formulas, it can be represented by the network, allowing computers to make judgments on matters that could only be assessed by human senses until now. 【Features】 ■ Simple trial evaluations are possible if data is provided. ■ The above mechanism can be utilized for budget allocation and internal approvals within your company. *For more details, please download the PDF or contact us.
Added to bookmarks
Bookmarks listBookmark has been removed
Bookmarks listYou can't add any more bookmarks
By registering as a member, you can increase the number of bookmarks you can save and organize them with labels.
Free membership registration