主催: The Japan Society of Mechanical Engineers
会議名: ロボティクス・メカトロニクス 講演会2022
開催日: 2022/06/01 - 2022/06/04
We present a light-weight CNN-based object tracker called MobileGoturn. The model resembles GOTURN except that convolutional layers are replaced by a low-cost structure called depthwise separable convolution and a hyper-parameter known as width-multiplier were applied to make a trade-off between speed and accuracy. We incorporated our novel model into a high-speed visual feedback system and demonstrated that the model is comparatively faster to track our proposed target objects in real-time.