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      Learning to Learn Task-Adaptive Hyperparameters for Few-Shot Learning

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          ImageNet Large Scale Visual Recognition Challenge

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            Object Tracking Benchmark.

            Object tracking has been one of the most important and active research areas in the field of computer vision. A large number of tracking algorithms have been proposed in recent years with demonstrated success. However, the set of sequences used for evaluation is often not sufficient or is sometimes biased for certain types of algorithms. Many datasets do not have common ground-truth object positions or extents, and this makes comparisons among the reported quantitative results difficult. In addition, the initial conditions or parameters of the evaluated tracking algorithms are not the same, and thus, the quantitative results reported in literature are incomparable or sometimes contradictory. To address these issues, we carry out an extensive evaluation of the state-of-the-art online object-tracking algorithms with various evaluation criteria to understand how these methods perform within the same framework. In this work, we first construct a large dataset with ground-truth object positions and extents for tracking and introduce the sequence attributes for the performance analysis. Second, we integrate most of the publicly available trackers into one code library with uniform input and output formats to facilitate large-scale performance evaluation. Third, we extensively evaluate the performance of 31 algorithms on 100 sequences with different initialization settings. By analyzing the quantitative results, we identify effective approaches for robust tracking and provide potential future research directions in this field.
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              Learning to Compare: Relation Network for Few-Shot Learning

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                Author and article information

                Contributors
                Journal
                IEEE Transactions on Pattern Analysis and Machine Intelligence
                IEEE Trans. Pattern Anal. Mach. Intell.
                0162-8828
                2160-9292
                1939-3539
                March 2024
                March 2024
                : 46
                : 3
                : 1441-1454
                Affiliations
                [1 ]Department of Data Science, Hanyang University, Seoul, South Korea
                [2 ]Samsung Advanced Institute of Technology, Seoul, South Korea
                [3 ]Graduate School of Data Science, Kyungpook National University, Seoul, South Korea
                [4 ]Global School of Media, College of IT, Soongsil University, Seoul, South Korea
                [5 ]Automation and Systems Research Institute (ASRI), Department of Electrical and Computer Engineering, Seoul National University, Seoul, South Korea
                Article
                10.1109/TPAMI.2023.3261387
                d213346b-face-44df-8da6-42d414c122c9
                © 2024

                https://ieeexplore.ieee.org/Xplorehelp/downloads/license-information/IEEE.html

                https://doi.org/10.15223/policy-029

                https://doi.org/10.15223/policy-037

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