Publication | Open Access
LAM: Remote Sensing Image Captioning with Label-Attention Mechanism
58
Citations
28
References
2019
Year
Remote Sensing ImagesEngineeringMachine LearningLanguage ProcessingWord Embedding VectorsNatural Language ProcessingMultimodal LlmImage AnalysisText-to-image RetrievalData ScienceVisual GroundingPattern RecognitionMachine TranslationRemote Sensing ImageMachine VisionImage Classification (Visual Culture Studies)Vision Language ModelDeep LearningComputer VisionVisual InformationMedicineImage Classification (Electrical Engineering)
Significant progress has been made in remote sensing image captioning by encoder-decoder frameworks. The conventional attention mechanism is prevalent in this task but still has some drawbacks. The conventional attention mechanism only uses visual information about the remote sensing images without considering using the label information to guide the calculation of attention masks. To this end, a novel attention mechanism, namely Label-Attention Mechanism (LAM), is proposed in this paper. LAM additionally utilizes the label information of high-resolution remote sensing images to generate natural sentences to describe the given images. It is worth noting that, instead of high-level image features, the predicted categories’ word embedding vectors are adopted to guide the calculation of attention masks. Representing the content of images in the form of word embedding vectors can filter out redundant image features. In addition, it can also preserve pure and useful information for generating complete sentences. The experimental results from UCM-Captions, Sydney-Captions and RSICD demonstrate that LAM can improve the model’s performance for describing high-resolution remote sensing images and obtain better S m scores compared with other methods. S m score is a hybrid scoring method derived from the AI Challenge 2017 scoring method. In addition, the validity of LAM is verified by the experiment of using true labels.
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