Moment and Highlight Detection via MLLM Frame Segmentation
By: I Putu Andika Bagas Jiwanta, Ayu Purwarianti
Potential Business Impact:
Find video moments by asking questions.
Detecting video moments and highlights from natural-language queries have been unified by transformer-based methods. Other works use generative Multimodal LLM (MLLM) to predict moments and/or highlights as text timestamps, utilizing its reasoning capability. While effective, text-based generation cannot provide direct gradients for frame-level predictions because the model only emits language tokens. Although recent Reinforcement Learning (RL) methods attempt to address the issue, we propose a novel approach by applying segmentation objectives directly on the LLM's output tokens. The LLM is fed with a fixed number of frames alongside a prompt that enforces it to output a sequence of continuous "0" and/or "1" characters, with one character per frame. The "0"/"1" characters benefit from the LLM's inherent language capability while also acting as background and foreground probabilities, respectively. Training employs segmentation losses on the probabilities alongside a normal causal LM loss. At inference, beam search generates sequence and logits, acting as moments and saliency scores, respectively. Despite sampling only 25 frames -- less than half of comparable methods -- our method achieved strong highlight detection (56.74 HIT@1) on QVHighlights. Additionally, our efficient method scores above the baseline (35.28 MAP) for moment retrieval. Empirically, segmentation losses provide a stable complementary learning signal even when the causal LM loss plateaus.
Similar Papers
SMART: Shot-Aware Multimodal Video Moment Retrieval with Audio-Enhanced MLLM
CV and Pattern Recognition
Finds exact video moments using words and sound.
See, Rank, and Filter: Important Word-Aware Clip Filtering via Scene Understanding for Moment Retrieval and Highlight Detection
CV and Pattern Recognition
Finds video parts using important words.
Minimal Clips, Maximum Salience: Long Video Summarization via Key Moment Extraction
Computation and Language
Finds important movie parts for better summaries.