This paper introduces a new dataset named Large-Scale Pornographic Dataset for detection and classification (LSPD) that intends to advance the standard quality of pornographic visual content classification andsexual object detection tasks. As we recognize, the LSPD dataset is the first ever dataset for both object detection andimage/video classification tasks in this area. The dataset gathers a large-scale corpus of pornographic/nonpornographicimages and videos containing a rich diversity of context. The images and videos are not only labelledwith their representative class but are also annotated by polygon masks of four private sexual objects (breasts, maleand female genitals, and anuses). Our dataset contains 500,000 images and 4,000 videos, with more than 50,000annotated images. To ensure fair use of the dataset, we present a detailed statistical analysis and provide baselinebenchmarking scenarios for both image/video classification and instance detection/segmentation tasks. Finally, weevaluate the performance of four object detection algorithms and a Convolutional Neural Network (CNN) classifieron these scenarios
CITATION STYLE
Phan, D. D., Nguyen, T. T., Nguyen, K. N. K., Nguyen, Q. H., Vu, D. L., & Tran, H. L. (2022). LSPD: A Large-Scale Pornographic Dataset for Detection and Classification. International Journal of Intelligent Engineering and Systems, 15(1), 198–213. https://doi.org/10.22266/IJIES2022.0228.19
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