2021
DOI: 10.48550/arxiv.2110.02794
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3rd Place Solution to Google Landmark Recognition Competition 2021

Abstract: In this paper, we show our solution to the Google Landmark Recognition 2021 Competition. Firstly, embeddings of images are extracted via various architectures (i.e., CNN-, Transformer-and hybrid-based), which are optimized by ArcFace loss. Then we apply an efficient pipeline to re-rank predictions by adjusting the retrieval score with classification logits and non-landmark distractors. Finally, the ensembled model scores 0.489 on the private leaderboard, achieving 3rd place in the 2021 edition of the Google La… Show more

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“…The task can be implemented using either classification or matching approaches. Recent classification approaches [8,54] use deep architectures such as EfficientNet [46] or visual transformers [27], in isolation or ensembled, to automatically label POIs in images. This process is fast since it only requires an inference for test images.…”
Section: Related Workmentioning
confidence: 99%
“…The task can be implemented using either classification or matching approaches. Recent classification approaches [8,54] use deep architectures such as EfficientNet [46] or visual transformers [27], in isolation or ensembled, to automatically label POIs in images. This process is fast since it only requires an inference for test images.…”
Section: Related Workmentioning
confidence: 99%