SubmissionNumber#=%=#14 FinalPaperTitle#=%=#CLTL@Multimodal Hate Speech Event Detection 2024: The Winning Approach to Detecting Multimodal Hate Speech and Its Targets ShortPaperTitle#=%=# NumberOfPages#=%=# CopyrightSigned#=%=# JobTitle#==# Organization#==# Abstract#==#In the context of the proliferation of multimodal hate speech related to the Russia-Ukraine conflict, we introduce a unified multimodal fusion system for detecting hate speech and its targets in text-embedded images. Our approach leverages the Twitter-based RoBERTa and Swin Transformer V2 models to encode textual and visual modalities, and employs the Multilayer Perceptron (MLP) fusion mechanism for classification. Our system achieved macro F1 scores of 87.27% for hate speech detection and 80.05% for hate speech target detection in the Multimodal Hate Speech Event Detection Challenge 2024, securing the 1st rank in both subtasks. We open-source the trained models at https://huggingface.co/Yestin-Wang Author{1}{Firstname}#=%=#Yeshan Author{1}{Lastname}#=%=#Wang Author{1}{Username}#=%=#yestin Author{1}{Email}#=%=#yestin-wang@outlook.com Author{1}{Affiliation}#=%=#Vrije Universiteit Amsterdam Author{2}{Firstname}#=%=#Ilia Author{2}{Lastname}#=%=#Markov Author{2}{Username}#=%=#markov Author{2}{Email}#=%=#i.markov@vu.nl Author{2}{Affiliation}#=%=#Vrije Universiteit Amsterdam, CLTL ========== èéáğö