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Papers/Learning to Compose Hypercolumns for Visual Correspondence

Learning to Compose Hypercolumns for Visual Correspondence

Juhong Min, Jongmin Lee, Jean Ponce, Minsu Cho

2020-07-21ECCV 2020 8Semantic correspondenceobject-detection
PaperPDFCode(official)

Abstract

Feature representation plays a crucial role in visual correspondence, and recent methods for image matching resort to deeply stacked convolutional layers. These models, however, are both monolithic and static in the sense that they typically use a specific level of features, e.g., the output of the last layer, and adhere to it regardless of the images to match. In this work, we introduce a novel approach to visual correspondence that dynamically composes effective features by leveraging relevant layers conditioned on the images to match. Inspired by both multi-layer feature composition in object detection and adaptive inference architectures in classification, the proposed method, dubbed Dynamic Hyperpixel Flow, learns to compose hypercolumn features on the fly by selecting a small number of relevant layers from a deep convolutional neural network. We demonstrate the effectiveness on the task of semantic correspondence, i.e., establishing correspondences between images depicting different instances of the same object or scene category. Experiments on standard benchmarks show that the proposed method greatly improves matching performance over the state of the art in an adaptive and efficient manner.

Results

TaskDatasetMetricValueModel
Image MatchingSPair-71kPCK37.3DHPF
Image MatchingPF-PASCALPCK90.7DHPF
Image MatchingPF-PASCALPCK (weak)82.1DHPF
Image MatchingPF-WILLOWPCK77.6DHPF
Image MatchingPF-WILLOWPCK (weak)80.2DHPF
Image MatchingCaltech-101IoU62DHPF
Image MatchingCaltech-101IoU (weak)61DHPF
Image MatchingCaltech-101LT-ACC87DHPF
Image MatchingCaltech-101LT-ACC (weak)86DHPF
Semantic correspondenceSPair-71kPCK37.3DHPF
Semantic correspondencePF-PASCALPCK90.7DHPF
Semantic correspondencePF-PASCALPCK (weak)82.1DHPF
Semantic correspondencePF-WILLOWPCK77.6DHPF
Semantic correspondencePF-WILLOWPCK (weak)80.2DHPF
Semantic correspondenceCaltech-101IoU62DHPF
Semantic correspondenceCaltech-101IoU (weak)61DHPF
Semantic correspondenceCaltech-101LT-ACC87DHPF
Semantic correspondenceCaltech-101LT-ACC (weak)86DHPF

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