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BakuFlow: A Streamlining Semi-Automatic Label Generation Tool
Lin, Jerry, Chen, Partick P. W.
Accurately labeling (or annotation) data is still a bottleneck in computer vision, especially for large-scale tasks where manual labeling is time-consuming and error-prone. While tools like LabelImg can handle the labeling task, some of them still require annotators to manually label each image. In this paper, we introduce BakuFlow, a streamlining semi-automatic label generation tool. Key features include (1) a live adjustable magnifier for pixel-precise manual corrections, improving user experience; (2) an interactive data augmentation module to diversify training datasets; (3) label propagation for rapidly copying labeled objects between consecutive frames, greatly accelerating annotation of video data; and (4) an automatic labeling module powered by a modified YOLOE framework. Unlike the original YOLOE, our extension supports adding new object classes and any number of visual prompts per class during annotation, enabling flexible and scalable labeling for dynamic, real-world datasets. These innovations make BakuFlow especially effective for object detection and tracking, substantially reducing labeling workload and improving efficiency in practical computer vision and industrial scenarios.
Designing a Socially Assistive Robot to Support Older Adults with Low Vision
Zhou, Emily, Shi, Zhonghao, Qiao, Xiaoyang, Matarić, Maja J, Bittner, Ava K
Socially assistive robots (SARs) have shown great promise in supplementing and augmenting interventions to support the physical and mental well-being of older adults. However, past work has not yet explored the potential of applying SAR to lower the barriers of long-term low vision rehabilitation (LVR) interventions for older adults. In this work, we present a user-informed design process to validate the motivation and identify major design principles for developing SAR for long-term LVR. To evaluate user-perceived usefulness and acceptance of SAR in this novel domain, we performed a two-phase study through user surveys. First, a group (n=38) of older adults with LV completed a mailed-in survey. Next, a new group (n=13) of older adults with LV saw an in-clinic SAR demo and then completed the survey. The study participants reported that SARs would be useful, trustworthy, easy to use, and enjoyable while providing socio-emotional support to augment LVR interventions. The in-clinic demo group reported significantly more positive opinions of the SAR's capabilities than did the baseline survey group that used mailed-in forms without the SAR demo.
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- Asia > Japan > Honshū > Kansai > Hyogo Prefecture > Kobe (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Questionnaire & Opinion Survey (1.00)
Make it easy to see, touch and voice control your iPhone: How to make your phone accessible
I have a friend who is 75-years old and has Parkinson's disease. He's also crazy about his iPhone and tech in general, and eager to buy the latest and greatest gadgets to hit the market. More importantly, his smartphone is his lifeline to the outside world. He uses it for watching and reading news – one of his favorite pastimes – and for keeping up with the world around him. He also goes straight to his smartphone to order food delivery, use car services like Lyft and Uber, and contact people in emergencies.
- Health & Medicine > Therapeutic Area (0.56)
- Transportation > Passenger (0.55)
- Transportation > Ground > Road (0.55)
- Information Technology > Communications > Mobile (1.00)
- Information Technology > Artificial Intelligence > Speech > Speech Recognition (0.43)