Instance Shadow Detection

Instance shadow detection is a brand new problem, aiming to find shadow instances paired with object instances. To approach it, we first prepare a new dataset called SOBA, named after Shadow-OBject Association, with 3,623 pairs of shadow and object instances in 1,000 photos, each with individual labeled masks. Second, we design LISA, named after Light-guided Instance Shadow-object Association, an end-to-end framework to automatically predict the shadow and object instances, together with the shadow-object associations and light direction. Then, we pair up the predicted shadow and object instances, and match them with the predicted shadow-object associations to generate the final results. In our evaluations, we formulate a new metric named the shadow-object average precision to measure the performance of our results. Further, we conducted various experiments and demonstrate our method's applicability on light direction estimation and photo editing.

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Datasets


Introduced in the Paper:

SOBA

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Instance Shadow Detection SOBA Our full pipeline Bounding Box SOAP 50 50.5 # 1
Bounding Box SOAP 75 16.4 # 1
Bounding Box SOAP 21.8 # 2
mask SOAP 50 50.9 # 1
mask SOAP 75 14.4 # 1
mask SOAP 21.6 # 2
Instance Shadow Detection SOBA Baseline 2 Bounding Box SOAP 50 47.8 # 2
Bounding Box SOAP 19.6 # 3
mask SOAP 50 48.1 # 2
mask SOAP 75 12.5 # 2
mask SOAP 20.1 # 3
Instance Shadow Detection SOBA Baseline 1 Bounding Box SOAP 50 40.3 # 3
Bounding Box SOAP 75 14.0 # 2
Bounding Box SOAP 16.7 # 4
mask SOAP 50 41 # 3
mask SOAP 75 10 # 3
mask SOAP 16.7 # 4

Methods


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