Academia Sinica is Taiwan’s national research academy, renowned for pioneering work across the sciences and humanities. Founded in 1928, it fosters high-impact interdisciplinary research, making it a hub for scholarly excellence and global collaboration. NEC Labs America partners with Academia Sinica to advance research in speech recognition, acoustic modeling, and low-resource language processing. Our joint work contributes to the development of multilingual communication technologies and human-computer interaction. Read about our latest news and collaborative publications with Academia Sinica.

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Unseen Object Segmentation in Videos via Transferable Representations

In order to learn object segmentation models in videos, conventional methods require a large amount of pixel-wise ground truth annotations. However, collecting such supervised data is time-consuming and labor-intensive. In this paper, we exploit existing annotations in source images and transfer such visual information to segment videos with unseen object categories. Without using any annotations in the target video, we propose a method to jointly mine useful segments and learn feature representations that better adapt to the target frames. The entire process is decomposed into two tasks: (1) solving a submodular function for selecting object-like segments, and (2) learning a CNN model with a transferable module for adapting seen categories in the source domain to the unseen target video. We present an iterative update scheme between two tasks to self-learn the final solution for object segmentation. Experimental results on numerous benchmark datasets show that the proposed method performs favorably against the state-of-the-art algorithms.