SOTAVerified

Image Captioning

Image Captioning is the task of describing the content of an image in words. This task lies at the intersection of computer vision and natural language processing. Most image captioning systems use an encoder-decoder framework, where an input image is encoded into an intermediate representation of the information in the image, and then decoded into a descriptive text sequence. The most popular benchmarks are nocaps and COCO, and models are typically evaluated according to a BLEU or CIDER metric.

( Image credit: Reflective Decoding Network for Image Captioning, ICCV'19)

Papers

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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1PaLICIDEr149.1Unverified
2GIT2, Single ModelCIDEr124.18Unverified
3GIT, Single ModelCIDEr122.4Unverified
4PaLICIDEr121.09Unverified
5CoCa - Google BrainCIDEr117.9Unverified
6Microsoft Cognitive Services teamCIDEr112.82Unverified
7Single ModelCIDEr108.98Unverified
8GRIT (zero-shot, no VL pretraining, no CBS)CIDEr105.9Unverified
9FudanFVLCIDEr104.9Unverified
10FudanWYZCIDEr104.25Unverified