50 research outputs found
Deep Multi-stream Network for Video-based Calving Sign Detection
We have designed a deep multi-stream network for automatically detecting
calving signs from video. Calving sign detection from a camera, which is a
non-contact sensor, is expected to enable more efficient livestock management.
As large-scale, well-developed data cannot generally be assumed when
establishing calving detection systems, the basis for making the prediction
needs to be presented to farmers during operation, so black-box modeling (also
known as end-to-end modeling) is not appropriate. For practical operation of
calving detection systems, the present study aims to incorporate expert
knowledge into a deep neural network. To this end, we propose a multi-stream
calving sign detection network in which multiple calving-related features are
extracted from the corresponding feature extraction networks designed for each
attribute with different characteristics, such as a cow's posture, rotation,
and movement, known as calving signs, and are then integrated appropriately
depending on the cow's situation. Experimental comparisons conducted using
videos of 15 cows demonstrated that our multi-stream system yielded a
significant improvement over the end-to-end system, and the multi-stream
architecture significantly contributed to a reduction in detection errors. In
addition, the distinctive mixture weights we observed helped provide
interpretability of the system's behavior
TurkScanner: Predicting the Hourly Wage of Microtasks
Workers in crowd markets struggle to earn a living. One reason for this is
that it is difficult for workers to accurately gauge the hourly wages of
microtasks, and they consequently end up performing labor with little pay. In
general, workers are provided with little information about tasks, and are left
to rely on noisy signals, such as textual description of the task or rating of
the requester. This study explores various computational methods for predicting
the working times (and thus hourly wages) required for tasks based on data
collected from other workers completing crowd work. We provide the following
contributions. (i) A data collection method for gathering real-world training
data on crowd-work tasks and the times required for workers to complete them;
(ii) TurkScanner: a machine learning approach that predicts the necessary
working time to complete a task (and can thus implicitly provide the expected
hourly wage). We collected 9,155 data records using a web browser extension
installed by 84 Amazon Mechanical Turk workers, and explored the challenge of
accurately recording working times both automatically and by asking workers.
TurkScanner was created using ~150 derived features, and was able to predict
the hourly wages of 69.6% of all the tested microtasks within a 75% error.
Directions for future research include observing the effects of tools on
people's working practices, adapting this approach to a requester tool for
better price setting, and predicting other elements of work (e.g., the
acceptance likelihood and worker task preferences.)Comment: Proceedings of the 28th International Conference on World Wide Web
(WWW '19), San Francisco, CA, USA, May 13-17, 201
Chiral primary amino alcohol organobase catalyst for the asymmetric Diels-Alder reaction of anthrones with maleimides
Simple chiral TES-amino alcohol organocatalysts containing a bulkysilyl [triethylsilyl: TES] group on oxygen atom at Îł-position were designed andsynthesized as new organocatalysts for the enantioselective Diels-Alder (DA) reactionof anthrones with maleimides to produce chiral hydroanthracene DA adducts (up to99% yield with up to 94% ee)
Effect of Insoles with a Toe-Grip Bar on Toe Function and Standing Balance in Healthy Young Women: A Randomized Controlled Trial
Objective. The aim of this randomized controlled study was to investigate the effects of insoles with a toe-grip bar on toe function and standing balance in healthy young women. Methods. Thirty female subjects were randomly assigned to an intervention group or a control group. The intervention group wore shoes with insoles with a toe-grip bar. The control group wore shoes with general insoles. Both groups wore the shoes for 4 weeks, 5 times per week, 9 hours per day. Toe-grip strength, toe flexibility, static balance (total trajectory length and envelope area of the center of pressure), and dynamic balance (functional reach test) were measured before and after the intervention. Results. Significant interactions were observed for toe-grip strength and toe flexibility (F=12.53, p<0.01; F=5.84, p<0.05, resp.), with significant improvement in the intervention group compared with that in the control group. Post hoc comparisons revealed that both groups showed significant improvement in toe-grip strength (p<0.01 and p<0.05, resp.), with higher benefits observed for the intervention group (p<0.01). Conversely, no significant interaction was observed in the total trajectory length, envelope area, and functional reach test. Conclusions. This study suggests that insoles with a toe-grip bar contribute to improvements in toe-grip strength and toe flexibility in healthy young women
A face/object recognition system using coarse region segmentation and dynamic-link matching
An image recognition model that combines some neural-network-based imageprocessing models is proposed. The recognition procedure consists of coarse regionsegmentation/extraction performed by a resistive-fuse network, Gabor wavelet transformation anddynamic-link matching. We have also developed a PC-based face/object recognition systemincluding FPGA implementation of the resistive-fuse network. The system has successfullyachieved real-time face recognition from a natural scene image.Invited papers of the 1st Meeting entitled Brain IT 2004, Hibikino, Kitakuyushu, Japan, 7-9 March 200