Core Viewpoint - The article discusses the ongoing relevance of trajectory prediction in the context of end-to-end models, highlighting that many companies still utilize layered approaches where trajectory prediction remains a key algorithmic focus. The article emphasizes the significance of multi-agent trajectory prediction methods based on diffusion models, which are gaining traction in various applications such as autonomous driving and intelligent monitoring [1][2]. Group 1: Trajectory Prediction Research - Despite the rise of end-to-end models, trajectory prediction continues to be a hot research area, with significant output in conferences and journals [1]. - Multi-agent trajectory prediction aims to forecast future movements based on historical trajectories of multiple interacting agents, which is crucial in fields like autonomous driving and robotics [1]. - Traditional methods often struggle with the uncertainty and multimodality of human behavior, while generative models like GANs and CVAEs, although capable of simulating multimodal distributions, lack efficiency [1]. Group 2: Diffusion Models - Diffusion models have emerged as a new class of models that achieve complex distribution generation through gradual denoising, showing significant breakthroughs in image generation and other fields [2]. - The Leapfrog Diffusion Model (LED) enhances real-time prediction by reducing denoising steps, achieving a 19-30 times speedup while improving accuracy on various datasets [2]. - Mixed Gaussian Flow (MGF) and Pattern Memory-based Diffusion Model (MPMNet) are also highlighted for their advanced performance in trajectory prediction by better matching multimodal distributions and utilizing human motion patterns, respectively [2]. Group 3: Course Objectives and Structure - The course aims to provide a systematic understanding of trajectory prediction and diffusion models, helping students integrate theoretical knowledge with practical coding skills [6]. - It addresses common challenges faced by students, such as lack of direction and difficulties in reproducing research papers, by offering a structured approach to model development and academic writing [6]. - The course includes a comprehensive curriculum that covers classic and cutting-edge papers, coding implementations, and writing methodologies, ultimately guiding students to produce a draft of a research paper [6][9]. Group 4: Target Audience and Requirements - The course is designed for graduate students and professionals in trajectory prediction and autonomous driving, aiming to enhance their research capabilities and resume value [8]. - Participants are expected to have a foundational understanding of deep learning and familiarity with Python and PyTorch [10]. - The course emphasizes the importance of academic integrity and active participation, with specific requirements for attendance and assignment completion [15]. Group 5: Course Highlights and Outcomes - The program features a "2+1" teaching model with experienced instructors providing comprehensive support throughout the learning process [16][17]. - Students will gain access to datasets, baseline codes, and essential papers, facilitating a deeper understanding of the subject matter [20][21]. - Upon completion, students will have produced a research paper draft, a project completion certificate, and potentially a recommendation letter based on their performance [19].
端到端盛行的当下,轨迹预测这个方向还有研究价值吗?
自动驾驶之心·2025-08-12 08:05