Sparse Neural Generative Inference Based Pose Estimation
Advanced Computer Vision - Fall 2020 - Professor David Fouhey
We envisioned a light weight pose estimation model that learns end-to-end to leverage moving particles that sample portions of the image to inform object pose estimation.
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The image shows the produced pipeline. Movitated by reducing model and time coplexity, we aimed to utilize particle-filter like sampling to attend to areas where objects might be present in high resolution images.